WO2001049039A1 - Methods and apparatus for reduction of prediction modes in motion estimation - Google Patents

Methods and apparatus for reduction of prediction modes in motion estimation Download PDF

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Publication number
WO2001049039A1
WO2001049039A1 PCT/US2000/035433 US0035433W WO0149039A1 WO 2001049039 A1 WO2001049039 A1 WO 2001049039A1 US 0035433 W US0035433 W US 0035433W WO 0149039 A1 WO0149039 A1 WO 0149039A1
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field
search
frame
motion vector
motion
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PCT/US2000/035433
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French (fr)
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Ching-Fang Chang
Naofumi Yanagihara
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Sony Electronics Inc.
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Priority to AU22941/01A priority Critical patent/AU2294101A/en
Publication of WO2001049039A1 publication Critical patent/WO2001049039A1/en

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/10Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding
    • H04N19/102Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding characterised by the element, parameter or selection affected or controlled by the adaptive coding
    • H04N19/103Selection of coding mode or of prediction mode
    • H04N19/105Selection of the reference unit for prediction within a chosen coding or prediction mode, e.g. adaptive choice of position and number of pixels used for prediction
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/10Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding
    • H04N19/102Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding characterised by the element, parameter or selection affected or controlled by the adaptive coding
    • H04N19/103Selection of coding mode or of prediction mode
    • H04N19/112Selection of coding mode or of prediction mode according to a given display mode, e.g. for interlaced or progressive display mode
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/10Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding
    • H04N19/134Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using adaptive coding characterised by the element, parameter or criterion affecting or controlling the adaptive coding
    • H04N19/136Incoming video signal characteristics or properties
    • H04N19/137Motion inside a coding unit, e.g. average field, frame or block difference
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/40Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using video transcoding, i.e. partial or full decoding of a coded input stream followed by re-encoding of the decoded output stream
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/50Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding
    • H04N19/503Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding involving temporal prediction
    • H04N19/51Motion estimation or motion compensation
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/50Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding
    • H04N19/503Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding involving temporal prediction
    • H04N19/51Motion estimation or motion compensation
    • H04N19/547Motion estimation performed in a transform domain
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/50Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding
    • H04N19/503Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding involving temporal prediction
    • H04N19/51Motion estimation or motion compensation
    • H04N19/56Motion estimation with initialisation of the vector search, e.g. estimating a good candidate to initiate a search
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N5/00Details of television systems
    • H04N5/14Picture signal circuitry for video frequency region
    • H04N5/144Movement detection
    • H04N5/145Movement estimation

Definitions

  • the present invention relates generally to methods and apparatus for motion estimation for video image processing, and in particular, improved methods and apparatus for determining motion vectors between video image pictures with a hierarchical motion estimation technique using block-matching and integral projection data.
  • MPEG-1 is a compression algorithm intended for video devices having intermediate data rates.
  • MPEG-2 is a compression algorithm for devices using higher data rates, such as digital high-definition TV (HDTV), direct broadcast satellite systems (DBSS), cable TV (CATV), and serial storage media such as digital video tape recorders (VTR).
  • Digital Video (DV) format is another format used widely in consumer video products, such as digital camcorders. The DV format is further explained in the SD Specifications of Consumer-Use Digital VCRs dated December 1994.
  • a video sequence is composed of a series of still pictures taken at closely spaced intervals in time that are sequentially displayed to provide the illusion of continuous motion.
  • Each picture may be described as a two- dimensional array of samples, or "pixels". Each pixel describes a specific location in the picture in terms of brightness and hue. Each horizontal line of pixels in the two-dimensional picture is called a raster line.
  • Pictures may be comprised of a single frame or two fields.
  • the video frame When sampling or displaying a frame of video, the video frame may be "interlaced” or “progressive.” Progressive video consists of frames in which the raster lines are sequential in time, as shown in Fig. 1A.
  • the MPEG-1 standard allows only progressive frames.
  • each frame may be divided into two interlaced fields, as shown in Fig. 1 B. Each field has half the lines in the full frame and the fields are interleaved such that alternate lines in the frame belong to alternative fields.
  • one field is referred to as the "top” field, while the other is'called the "bottom” field.
  • the MPEG-2 standard allows both progressive and interlaced video.
  • MPEG applications achieve data compression is to take advantage of the redundancy between neighboring pictures of a video sequence. Since neighboring pictures tend to contain similar information, describing the difference between neighboring pictures typically requires less data than describing the new picture. If there is no motion between neighboring pictures, for example, coding the difference (zero) requires less data than recoding the entire new picture.
  • An MPEG video sequence is comprised of one or more groups of pictures, each group of which is composed of one or more pictures of type I-, P-, or B-.
  • Intra-coded pictures, or "l-pictures,” are coded independently without reference to any other pictures.
  • Predictive-coded pictures, or "P- pictures” use information from preceding reference pictures, while bidirectionally predictive-coded pictures, or "B-pictures,” may use information from preceding or upcoming pictures, both, or neither.
  • Motion estimation is the process of estimating the displacement of a portion of an image between neighboring pictures. For example, a moving soccer ball will appear in different locations in adjacent pictures.
  • Displacement is described as the motion vectors that give the best match between a specified region, e.g., the ball, in the current picture and the corresponding displaced region in a preceding or upcoming reference picture.
  • the difference between the specified region in the current picture and the corresponding displaced region in the reference picture is referred to as "residue”.
  • pixel-recursive algorithms predict the displacement of each pixel iteratively from corresponding pixels in neighboring frames.
  • Block- matching algorithms estimate the displacement between frames on a block-by-block basis and choose vectors that minimize the difference.
  • the current image to be encoded is divided into equal-sized blocks of pixel information.
  • the pixels are grouped into "macroblocks," each consisting of a 16x16 sample array of luminance samples together with one 8x8 block of samples for each of the two chrominance components.
  • the 16x16 array of luminance samples further comprises four 8x8 blocks that are typically used as input blocks to the compression models.
  • Fig. 2 illustrates one iteration of a conventional block-matching process.
  • Current picture 220 is shown divided into blocks. Each block can be any size; however, in an MPEG device, for example, current picture 220 would typically be divided into blocks each consisting of 16x16-sized macroblocks.
  • each block in current picture 220 is coded in terms of its difference from a block in a previous picture 210 or upcoming picture 230.
  • current block 200 is compared with similar-sized "candidate" blocks within search range 215 of preceding picture 210 or search range 235 of upcoming picture 230.
  • the candidate block of the preceding or upcoming picture that is determined to have the smallest difference with respect to current block 200 is selected as the reference block, shown in Fig. 2 as reference block 250.
  • the motion vectors and residues between reference block 250 and cur-rent block 200 are computed and coded.
  • Current picture 220 can be restored during decompression using the coding for each block of reference picture 210 as well as motion vectors and residues for each block of current picture 220.
  • the motion vectors associated with the preceding reference picture are called forward motion vectors, whereas those associated with the upcoming reference picture are called backward motion vectors.
  • Difference between blocks may be calculated using any one of several known criterion, however, most methods generally minimize error or maximize correlation. Because most correlation techniques are computationally intensive, error-calculating methods are more commonly used. Examples of error-calculating measures include mean square error (MSE), mean absolute distortion (MAD), and sum of absolute distortions (SAD). These criteria are described in Joan L. Mitchell et al., MPEG Video Compression Standard, International Thomson Publishing (1997), pp. 284-86. A block-matching algorithm that compares the current block to every candidate block within the search range is called a "full search". In general, larger search areas generally produce a more accurate displacement vector, however, the computational complexity of a full search is proportional to the size of the search area and is too slow for some applications.
  • MSE mean square error
  • MAD mean absolute distortion
  • SAD sum of absolute distortions
  • a full search block-matching algorithm applied on a macroblock of size 16x16 pixels over a search range of + N pixels with one pixel accuracy, for example, requires (2xN+1 ) 2 block comparisons. For N 16, 1089 16x16 block comparisons are required. Because each block comparison requires 16x16, or 256, calculations, this method is computationally intensive and operationally very slow. Techniques that simply reduce the size of the search area, however, run a greater risk of failing to find the optimal matching block.
  • Another method for reducing the amount of computation in a full search is to calculate the displacement between blocks using integral projection data rather than directly using spatial domain pixel information.
  • An integral projection of pixel information is a one-dimensional array of sums of image pixel values along a horizontal or vertical direction. Using two 1-D horizontal and vertical projection arrays rather than the 2-dimensional array of pixel information in a block-matching algorithm significantly reduces the number of computations of each block-matching. This technique is described in a paper by I.H. Lee and R.H. Park entitled "Fast Block Matching Algorithms Using Integral Projections," Proc. Tencon '87 Conf., 1987, pp. 590-594.
  • Hierarchical search techniques In a first stage, for example, a coarse search is performed over a reasonably large area. In successive stages of a conventional hierarchical search, the size of the search area is reduced.
  • a three-step hierarchical search is described in H. M. Jong et al., "Parallel Architectures for 3-Step Hierarchical Search Block- Matching Algorithm," IEEE Trans. On Circuits and Systems for Video Technology, Vol. 4, August 1994, pp. 407-416.
  • the hierarchical search described in Jong et al. is inadequate for some applications because the coarse search does not utilize all of the pixel information and thus may form an incorrect starting point for the finer search.
  • Fast motion estimation techniques are particularly useful when converting from one digital video format to another.
  • Digital video is stored in encoded, compressed form.
  • the digital video When converting from one format to another using conventional devices, the digital video must first be decompressed and decoded to its original pixel form and then subsequently encoded and compressed for storage or transmission in the new format. Conversion techniques requiring that digital video be fully decoded are very time- consuming.
  • the present invention provides improved methods and apparatus for performing motion estimation using a multi-tiered search technique that minimizes the number of operations while maintaining the quality of the motion vector.
  • the present invention provides methods and apparatus for motion estimation that allow digital video data conversion from one format to a second format without full reduction to pixel data thereby greatly reducing the time required for data format conversion.
  • a motion vector between first and second pictures of video image data in a video sequence Each picture includes a plurality of macroblocks.
  • a first motion vector is determined describing displacement between the first field of a first frame and the first field of a second frame based on a field search.
  • a second motion vector describing displacement between the second field of the first frame and the second field of the second frame is determined based on a field search. If the difference between the first and second motion vector is less than a threshold, a third motion vector describing displacement between the first and second frames is determined based on a frame search.
  • the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
  • Fig. 1A is a diagram illustrating a frame in progressive video
  • Fig. 1 B is a series of diagrams illustrating a frame divided into two interlaced fields
  • Fig. 2 is a diagram illustrating a prior art block-matching technique
  • Fig. 3 is a diagram showing a system for converting digital video from a DV format into an MPEG format
  • Fig. 4 is a flow diagram showing a method of determining motion vectors consistent with the present invention
  • Fig. 5 is a diagram showing a video sequence
  • Fig. 6 demonstrates how 8-point vertical integral projections may be calculated from 8x8 pixel data
  • Fig. 7a illustrates, for example, that 8-point vertical projection data may be calculated either by summing columns of an 8x8 array of pixel data, or by performing a 1-D 8-point iDCT on row 0 of DCT coefficients;
  • Fig. 7b illustrates, for example, that 2-point vertical projection data may be calculated either by summing four columns of an 8x8 array of pixel data, or approximately by performing a l-D 2-point iDCT on DCT coefficients C 0 ⁇ 0 and
  • Fig. 8 shows a method for searching in both the horizontal and vertical directions using projection data
  • Fig. 9 is a flow diagram showing a method of determining motion vectors consistent with the present invention.
  • Fig. 10 is a chart describing one method for determining motion vectors using motion vectors for neighboring macroblocks consistent with the present invention
  • Fig. 11 is a chart illustrating pictorially one example of how motion vectors may be determined using motion vectors for neighboring macroblocks consistent with the present invention
  • Fig. 12 is a diagram of a system consistent with the present invention.
  • Fig. 13 is a diagram of a processor consistent with the present invention.
  • Motion estimation techniques compress the amount of data needed to represent a digital video sequence by encoding one picture in terms of its difference from a neighboring picture rather than encoding each picture in its entirety.
  • the decoder reconstructs the current picture using the reference picture and the motion vectors.
  • One method for doing so is to completely decode the video sequences into pixel information using a decoder and recode the pixel information into the second format using an encoder.
  • motion estimation is performed in the pixel domain on pixel information.
  • Fig. 3 shows an example of a system for converting digital video from a DV format into an MPEG format.
  • digital video is received in compressed format and deframed (step 310).
  • the resulting data is subjected to variable length decoding (step 320), inverse quantization (step 330), and inverse discrete cosine transform (iDCT) (step 340).
  • the result following the iDCT is pixel information.
  • a second format in this case,
  • Transcoders are devices that convert digital video from one format to another. For example, transcoders perform the decoding and encoding process such as the example shown in Fig. 3.
  • One method for improving the performance of transcoders is to develop methods for converting one format of data to a second format without performing the entire decoding and re- encoding processes. As shown in Fig. 3, the computation-intensive steps of iDCT and DCT may be eliminated if a transcoder can perform motion estimation on compressed data.
  • step 390 motion estimation is performed on decoded data that has not yet undergone the iDCT stage.
  • Data in step 390 may still be described as "compressed" and requires different calculations than pixel information.
  • a motion vector is estimated for each block of a current picture with respect to a reference picture using a multi-stage operation.
  • the motion estimation methods described herein may be used in both pixel and compressed domains.
  • an application implementing the process of the present invention coarsely searches a reference frame to obtain a candidate supermacroblock that best approximates a supermacroblock in a current frame.
  • the supermacroblock is divided into a plurality of macroblock components.
  • the first macroblock of each supermacroblock in a current frame is used as a starting point for a second search.
  • the motion vector resulting from the second search may be further fine-tuned by an optional third search.
  • motion vectors are determined for field data, a test is performed to determine whether a motion vector for the frame comprised of the two fields would produce a better result. If a difference between the field motion vectors is less than a dynamic threshold, a frame search is performed, and the motion vector for the frame may be used instead of the motion vector for the fields. Motion vectors for the remaining macroblocks in a supermacroblock are estimated based on neighboring blocks.
  • methods consistent with the present invention are used to estimate motion vectors in a transcoder for converting digital video image data in the DV format to data in an MPEG-1 or MPEG-2 progressive format.
  • MPEG-1 and MPEG-2/progressive formats are frame-based, therefore, in this embodiment, motion vectors are calculated for frames of data.
  • Fig. 4 contains a flow chart illustrating a method for estimating motion vectors for each macroblock of a current picture using a multi-tiered searching method consistent with the present invention.
  • Data representing a current picture is divided into data representing supermacroblocks. If motion estimation is performed in the pixel domain (step 350 of Fig. 3), the data will be pixel data. If motion estimation is performed in the compressed domain (step 390 of Fig. 3), motion estimation will be performed using DCT coefficient data representing supermacroblocks. Starting with a first supermacroblock (step 410), the reference picture is searched for a candidate supermacroblock that best matches the current supermacroblock (step 415).
  • a "best" candidate supermacroblock is defined as the supermacroblock that produces the best comparison values, that is, the least error or greatest correlation when compared with the current supermacroblock using any known error calculation or correlation determination method.
  • SAD error calculation or correlation determination method
  • the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance.
  • a best candidate supermacroblock may be obtained using any available searching technique including, for example, the full search and other searches described above.
  • the "best" candidate supermacroblock is selected using the motion estimation method described in U.S. Patent Application No. 09/081 ,279, to Chang et al. ("Chang II"), filed on May 20, 1998, entitled “Motion Estimation Process and System Using Sparse Block-Matching and Integral Projection,” the contents of which are hereby expressly incorporated by reference.
  • "best" candidate supermacroblocks are selected using a telescopic search.
  • Telescopic searches use the motion vector determined for a preceding picture to decrease the search range.
  • MPEG video sequences are composed of a series of still pictures or "frames" taken at closely spaced intervals in time that are sequentially displayed to provide the illusion of continuous motion.
  • Each group of pictures is composed of three types of pictures, l-pictures (intra-coded), P-pictures (predictive-coded), and B-pictures (bidirectionally-coded), as shown in Fig. 5.
  • l-pictures are coded independently, without reference to the other pictures.
  • P- and B- pictures are compressed by coding the differences between the picture and reference I- or P- pictures.
  • P- pictures are coded with response to preceding I- or P- pictures, while B- pictures may be coded from preceding or succeeding pictures.
  • the l-picture is coded independently. Then, the l-picture is used as a reference frame.
  • Candidate supermacroblocks in the I reference frame that best match supermacroblocks in the B., picture are found using, for example, a full search, and forward motion vectors for the B 1 picture are determined.
  • the search for the forward motion vector of the B 2 picture begins with the motion vector for the B 1 picture and the forward motion vector of the P picture is based on the forward motion vector of the B 2 picture.
  • the backward motion vector of the B 1 picture is determined by a search beginning at the backward motion vector for the B 2 picture.
  • the current supermacroblock and candidate supermacroblocks may be compared using projection data to further reduce the number of necessary calculations. For example, during any block-matching search technique, each time the current block is compared with a candidate block, a difference is calculated. Using sum of absolute distortions (SAD) as the matching criteria, for example, the differences may be defined as follows:
  • a motion vector of (1 ,1 ) for example, means that a block in the reference frame one pixel horizontally to the right and one pixel vertically below the corresponding location of current block in the reference frame closely resembles current block.
  • An integral projection of pixel information is a sum of some number of image pixel values along a certain horizontal or vertical direction.
  • Fig. 6 shows how to calculate 8-point vertical integral projections from 8 x 8 pixel data.
  • Integral projection information can be obtained by calculating one- dimensional integral projection arrays from either pixel information or discrete cosine transform (DCT) coefficient data.
  • DCT discrete cosine transform
  • 8-point vertical projection data may be calculated either by summing columns of an 8x8 array of pixel data, or by performing a 1-D 8-point iDCT on row 0 of DCT coefficients, since these two calculations produce the same result.
  • the 2-point vertical projection data may be calculated either by summing four columns of an 8x8 array of pixel data, or approximately by performing a 1-D 2-point iDCT on DCT coefficients C 00 and
  • R v (x) is the vertical projection for the xth column of the current block and S v (x+ij) is the vertical projection or sum of the (x+i)th column of the candidate block starting at row/
  • a motion vector for each macroblock (MB) in the current supermacroblock is determined.
  • the current supermacroblock may consist of MxN macroblocks, however, the example described herein assumes that each supermacroblock consists of four macroblocks in a square configuration.
  • the best candidate macroblock in a reference frame may be determined by either searching or estimation (step 420).
  • the best candidate macroblock in a reference frame is determined using a second search technique (step 430).
  • the motion vector found in the first search (step 415) is used as the starting point of the second search.
  • the second search technique used may be any conventional search technique such as, for example, full search.
  • the "best" candidate macroblock is selected using the method described in Chang II.
  • the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but requires additional computations that may affect performance.
  • Fig. 8 illustrates one example of a search process for a best candidate 8x8 macroblock using 8-point vertical and horizontal projection data.
  • the frame of data is divided into horizontal strips of 8 rows.
  • Vertical projection data is computed for each strip.
  • a one-dimensional 8-point horizontal iDCT may be applied to the first row of the 8x8 DCT block.
  • the candidate macroblock in each strip that best matches the current macroblock is determined by, for example, locating the macroblock that produces the lowest SAD when compared to the current macroblock.
  • a best candidate macroblock for each strip is determined.
  • the frame is then searched in the vertical direction using horizontal projection data as shown on the right side of Fig. 8.
  • a 1-D 8-point vertical iDCT may be applied to the first column of the 8x8 DCT block.
  • the frame is searched vertically +/- 4 pixels for a best candidate in the vertical column defined by the best candidate from the horizontal search.
  • the macroblock in the reference frame that results in the lowest SAD among all macroblocks searched by the vertical search when compared with the current macroblock is used to compute the motion vector.
  • the results of the second search may be used as a starting point for an additional, optional third search (step 435).
  • the third search will be performed using the best candidate macroblock determined in step 430 as the starting macroblock for this search stage.
  • the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance. However, at this stage, the objective is to further fine tune the motion vector. Therefore, a search range of approximately +/- 0.5 pixels is recommended.
  • step 455 is the Intra/NoMV decision.
  • the Intra mode means the macroblock is encoded independently without reference to the reference pictures.
  • the SAD for INTRA mode is the difference between the pixel data of the current MB and the average value of that MB. It can be expressed by
  • Intra mode that is, coding the macroblock independently or without reference to another macroblock, may produce better image quality than motion-predicted mode. Therefore, the Intra mode is given higher priority over encoding the motion vector when the SAD is small.
  • the NoMV mode is a special case when the motion vector is zero. Since it takes the fewest number of bits to encode the zero motion vector, the zero motion vector is given higher priority than other motion vectors.
  • the motion vector is stored or output.
  • step 460 If the process has just determined the motion vector for the last macroblock in the current supermacroblock (step 460), the process continues with step 465. Otherwise, the process continues by determining motion vectors for the other macroblocks in the current supermacroblock (step 420).
  • Methods consistent with the present invention may determine motion vectors for the second and succeeding macroblocks of a supermacroblock based on the motion vectors from neighboring macroblocks (step 425). The process may determine these motion vectors based on any suitable combination of neighboring motion vectors including, for example, the average of two nearest neighbors. In one embodiment of the current invention, the motion vectors are determined using the method of utilizing motion vectors from neighboring motion vectors described below in section C.
  • step 465 the process continues with step 465. If the process has determined the motion vectors for the last supermacroblock in a given frame or field (step 465), the process terminates. Otherwise, the process chooses a next supermacroblock (step 470) and continues with step 415.
  • step 470 Multi-Tiered Motion Estimation Process with Field Data
  • Fig. 9 contains a flow chart illustrating a method for estimating motion vectors for each macroblock of a current picture when the picture is encoded as two fields.
  • data representing a current picture is divided into data representing supermacroblocks. If motion estimation is performed in the pixel domain (step 350 of Fig. 3), the data will be pixel data. If motion estimation is performed in the compressed domain
  • motion estimation will be performed using DCT coefficient data representing supermacroblocks.
  • a best candidate supermacroblock may be obtained using any available searching technique including, for example, a full search or a telescopic search.
  • the "best" candidate supermacroblock is selected using the motion estimation method described.
  • the current supermacroblock and candidate supermacroblocks may be compared using projection data to further reduce the number of necessary calculations, as described above.
  • integral projection information can be obtained by calculating one- dimensional integral projection arrays from either pixel information or discrete cosine transform (DCT) coefficient data.
  • DCT discrete cosine transform
  • a motion vector for each macroblock (MB) in the current supermacroblock is determined.
  • the best candidate macroblock in a reference frame is determined using a second search technique (step 930).
  • the motion vector found in the first search is used as the starting point of the second search.
  • the second search technique used may be any conventional search technique such as, for example, full search.
  • the "best" candidate macroblock is selected using the technique described in Chang II.
  • the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance.
  • the underlying video may be encoded either as 8x8 frame data or 4x8 fields of data. Fields may be encoded separately or two fields may be taken together and treated as an 8x8 frame. Frame data is compressed using an 8x8 DCT mode whereas field data is generally compressed using a 2x4x8 DCT mode.
  • the DV format specification recommends that the 8x8 DCT mode be used when the difference between two fields is small. By contrast, the 2x4x8 DCT mode should be used when two fields differ greatly.
  • Case I 2x4x8 DCT mode
  • the second search is performed using video field data that has been encoded in 2x4x8 DCT mode.
  • a reference picture is divided into horizontal strips of 8 rows, and is searched first in the horizontal direction using 8-point vertical field projection data beginning at the motion vector obtained from the first search.
  • the top and bottom fields are searched separately.
  • a one-dimensional 8-point horizontal iDCT is performed on the first row of the top 4x8 DCT block.
  • the top 4x8 DCT block can be found by adding the sum 4x8 DCT block with the difference 4x8 DCT block.
  • the sum 4x8 DCT block is the upper 4x8 portion of the 8x8 block whereas the difference 4x8 DCT block is the lower 4x8 portion of the 8x8 block as defined in the DV format.
  • a one-dimensional 8-point horizontal iDCT is performed on the first row of the bottom 4x8 DCT block.
  • the bottom 4x8 DCT block can be found by subtracting the difference 4x8 DCT block from the sum 4x8 DCT block.
  • a vertical search is performed.
  • horizontal field projections for both the top and bottom fields are used.
  • 4-point horizontal field projections for the top field are determined by taking a one-dimensional (1-D) 4-point vertical iDCT of the first column of the top 4x8 DCT block.
  • Four-point horizontal field projections for the bottom field are obtained by taking a 1-D 4-point vertical iDCT of the first column of the bottom 4x8 DCT block. The projections are used when computing the SAD and determining the best candidate macroblock.
  • the best candidate of all the candidates in the vertical search is used to determine the motion vector. This search is performed separately for both the top and bottom fields.
  • the motion vector MV tt refers to the motion vector from the top field in the current frame to the top field in the reference frame, i.e top-top (TT).
  • motion vector MV bb is the motion vector from the bottom field in the current frame to the bottom field in the reference frame, i.e. bottom-bottom (BB)
  • TT top-top
  • BB bottom-bottom
  • the second search is performed using video field data that has been encoded in 8x8 DCT mode.
  • a reference picture is divided into vertical strips of 8 columns, and is searched first in the vertical direction using 4-point horizontal field projection data beginning at the motion vector obtained from the first search.
  • the top and bottom fields are searched separately.
  • To obtain the 4-point horizontal field projections for the top field even outputs of a one-dimensional 8-point vertical iDCT of the first column of an 8x8 DCT block are chosen.
  • the odd outputs of the 1-D 8-point vertical iDCT of the first column of the 8x8 DCT block are used as the 4-point horizontal field projections for the bottom field.
  • the horizontal field projects are used in calculating the SAD between each block comparison and determining best candidate macroblocks in each column.
  • a horizontal search is performed in the spatial domain separately for both the top and bottom fields.
  • the search range is +/- 4 pixels.
  • the horizontal search may be performed using, for example, a full search algorithm.
  • the SAD of spatial domain pixel information between the reference frame and the current frame is calculated for each candidate macroblock in the search range.
  • the horizontal search may be performed using other search methods, such as logarithmic search.
  • the second search is also performed using video field data that has been encoded in 8x8 DCT mode.
  • a reference picture is divided into horizontal strips of 8 rows, rather than vertical strips of 8 columns, and is searched first in the horizontal direction using 8-point vertical field projection data beginning at the motion vector obtained from the first search.
  • the top and bottom fields are searched separately.
  • the pixel information is first derived by iDCT, then the 8-point vertical field projections for the top field are computed by summing the even rows of the macroblock.
  • the 8-point vertical field projections for the bottom field are determined by summing the odd rows of the macroblock.
  • the SADs of vertical field projections instead of the SADs of pixel information in Case II A, are used to determine a best candidate for each horizontal strip. Beginning at the best candidate in each horizontal strip, a vertical search is performed. When calculating the SAD between each comparison, horizontal field projections for both the top and bottom fields are used.
  • 4-point horizontal field projections for the top field are determined by taking the even outputs of a 1-D 8-point vertical iDCT of the first column of the 8x8 DCT block.
  • Four-point horizontal field projections for the bottom field are obtained by taking the odd outputs of a 1-D 8-point vertical iDCT of the first column of the 8x8 Dct block.
  • the projections are used when computed the SAD and determined the best candidate macroblock for each column.
  • the best candidate of all the candidates in the vertical search is used to determine the motion vector. This search is performed separately for both the top and bottom fields.
  • the motion vector MV tt refers to the motion vector from the top field in the current frame to the top field in the reference frame, i.e top-top (TT).
  • motion vector MV bb is the motion vector from the bottom field in the current frame to the bottom field in the reference frame, i.e. bottom-bottom (BB).
  • the vertical and horizontal searches are interchangeable, that is, the vertical search may be performed first and the horizontal search second.
  • the results of the second search may be used as a starting point for an additional, optional third search such as, for example, a spatial domain search (step 935).
  • the motion vector for the top block will be used as a starting point for a third search for the top block and the motion vector for the bottom block will be used as a starting point for a third search for a bottom block.
  • the result of step 935 will be two motion vectors, MV tt
  • the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance. However, at this stage, the objective is to further fine tune the motion vector and therefore a search range of approximately .5 pixels is preferred.
  • a motion vector for the frame comprised of the top and bottom fields may also be calculated.
  • the MPEG-2 standard suggests that motion vectors should be determined for all of top-top (TT), bottom-bottom (BB), top-bottom (TB), bottom-top (BT) field comparisons, as well as the frame (i.e. the two fields taken together). While all four vectors may be determined, in one embodiment of the present invention, the steps of calculating motion vectors for TB and BT are eliminated as one means of further reducing calculations. In methods consistent with the present invention, for example, the frame search step is not performed if it is determined to be unnecessary or unlikely to improve the quality of the motion vector.
  • the present invention includes a test for determining whether a frame prediction search is necessary.
  • the frame search should be performed.
  • Frame prediction mode may provide better matching between a reference frame and a current frame when the reference frame is interpolated for half-pixel motion vectors. In frame prediction mode, only one frame motion vector needs to be encoded, instead of two field motion vectors in field in field prediction modes. This decision may be represented mathematically, for example, as if
  • a suitable threshold may be calculated or described in any number of ways, however, in one embodiment of the present invention, the threshold is dynamic.
  • a dynamic threshold changes in response to the changing information in either preceding or succeeding fields.
  • the threshold may be calculated as the weighted sum of the average of the absolute difference of the motion vectors for TT and BB of previous frames. This calculation may be represented mathematically as:
  • Threshold 1 / 2 * avg
  • (N) is the average of the absolute difference of MV tt and MV bb for the Nth frame.
  • a frame search is performed in step 945.
  • the search in step 945 may be performed by any technique described earlier in association with steps 915, 930, or 935.
  • the search performed is a spatial domain search similar to the search described in step 935.
  • the starting motion vector for this frame search may be the motion vector for either the top field or the bottom field.
  • the starting vector is chosen to be the average of motion vectors for the top and frame prediction, i.e. (MV tt + MV bb )/2, and the search range is +/- 1.5 pixels.
  • a spatial domain search may be performed over any possible search range, however, generally at this point in the process there is little to be gained by using a large search range.
  • the frame search may be further improved by using a half-pel estimation process instead of full search.
  • step 955 is the Intra/NoMV decision.
  • the Intra mode means the macroblock is encoded independently without reference to the reference pictures. When the SAD is small, Intra mode may produce better image quality than motion predicted mode. Therefore, the Intra mode is given higher priority when the SAD is small.
  • the NoMV mode is a special case when the motion vector is zero. Since it takes the fewest number of bits to encode the zero motion vector, the zero motion vector is given higher priority than other motion vectors.
  • step 958 the motion vector is stored or output. If the process has just determined the motion vector for the last macroblock in the current supermacroblock (step 960), the process continues with step 965.
  • the process continues by determining motion vectors for the other macroblocks in the current supermacroblock (step 920).
  • Methods consistent with the present invention determine motion vectors for the second and succeeding macroblocks of a supermacroblock by estimation using the motion vectors from neighboring macroblocks (step 925).
  • the process may determine the motion vectors for the second and succeeding macroblocks using any suitable combination of neighboring motion vectors including, for example, the average of two nearest neighbors.
  • the motion vectors are determined using the method of utilizing motion vectors from neighboring motion vectors described in section C below.
  • step 965 If the process has determined the motion vectors for the last supermacroblock in a given frame or field (step 965), the process terminates.
  • step 970 chooses a next supermacroblock (step 970) and continues with step 915.
  • each frame or field is encoded using multiple motion vectors, one for each of the multiple macroblocks in the frame or field. Any method of estimating motion vectors for a frame or field may be improved by determining some of the motion vectors using motion vectors for neighboring macroblocks consistent with the present invention. By determining some of the motion vectors in this manner, some computations are avoided. Consistent with the present invention, for each macroblock in a frame or field, a decision is made whether to obtain the motion vector for that macroblock by performing a regular search or by estimation based on the motion vectors for neighboring macroblocks that have already been calculated. Fig.
  • FIG. 10 shows one example of a method for determining motion vectors for each macroblock in a frame or field that consists of 16 x 6 macroblocks.
  • a regular search (step 930 to step 958) is performed. If the number of a macroblock appears in shaded, italic type with no underline, the motion vector for that macroblock is obtained based on the motion vectors of the left and right neighboring macroblocks. If the number appears underlined, the motion vector for that macroblock is obtained based on the motion vectors for macroblocks above and below the current macroblock.
  • the numbers also indicate the order in which the motion vectors are determined.
  • the first motion vector to be determined is for the macroblock in the upper left corner labeled "1".
  • a regular search is performed.
  • a regular search is performed to obtain the motion vector for macroblock "2".
  • the search may be performed, for example, beginning at the motion vector determined in step 915 for supermacroblock #2 and performing steps 930 through 958.
  • two motion vectors have been obtained.
  • the motion vector for macroblock "3" may be determined based on the motion vectors for macroblocks "1" and "2", that is, the left and right neighbors. This process continues for the entire first row. If, as shown in Fig. 10, there is an even number of macroblocks in the first row, the last macroblock in the first row is determined by performing a regular search, since there will be no "right neighbor" motion vector.
  • the process determines the motion vector for the first macroblock in the third row.
  • the entire second row of motion vectors may be determined using previously determined motion vectors.
  • the motion vector for macroblock "18” may be determined based on the motion vector for macroblocks "1" and "17", that is, the upper and lower neighboring macroblocks to macroblock "18".
  • the motion vector for macroblock "19” is determined using a search. Following this determination, however, the motion vectors for macroblocks "20", “21”, and “22” may be determined based on previously determined motion vectors. As shown in Fig.
  • the motion vector for macroblock "20” is determined based.on upper and lower motion vectors for macroblocks “2" and “19” and motion vectors for macroblocks "21” and “22” are determined based on the motion vectors for left and right neighboring macroblocks "18" and “20” and “17” and “19”, respectively.
  • motion vectors for rows 2 and 3 may be determined in this order.
  • motion vectors for the second row may be determined after determining motion vectors for the entire third row.
  • Motion vectors for each macroblock in the frame or field are determined in this manner according to Fig. 10.
  • Fig. 11 shows one method for determining motion vectors based on previously determined motion vectors.
  • motion vectors for some macroblocks may be determined based on the motion vectors for left and right neighboring macroblocks or upper and lower neighboring macroblocks.
  • Each set of motion vectors may be, for example, averaged together to get a new motion vector.
  • previously determined motion vectors are used to determine a motion vector for the current macroblock according to the chart shown in Fig. 11.
  • MV 1 and MV 2 represent motion vectors for the left and right, or upper and lower, neighboring macroblocks.
  • MV ⁇ and MV 2 may each be a motion vector either for a macroblock in a frame or a field.
  • MV 1 and MV 2 are field vectors
  • the vertical component of the motion vector is converted into frame units by, for example, multiplying by 2, before Y is calculated.
  • Y a motion variation
  • MV 1 - MV 2 1 which may also be expressed mathematically as:
  • suitable thresholds T.,, T 2 , and T 3 include, for example, 1 , 2, and 3, respectively.
  • Y max[
  • the motion vector, MV. is chosen as the motion vector for the current macroblock. In an alternative embodiment, the motion vector for MV 2 is chosen.
  • Y is between a range of 0 and a first threshold, T.,.
  • the motion vector for the current macroblock is chosen to be either MV 1 or MV 2 , or the macroblock is coded independently of a reference picture, that is, "intra-coded.” If intra coding will result in the least amount of information to be encoded, the macroblock is coded independently. If, however, coding motion vector MV 1 or MV 2 will require less information to be coded, MV 1 or MV 2 (whichever results in the minimum SAD) is used as the motion vector for the current macroblock.
  • Y is between a range of T 1 and a second threshold, T 2 .
  • the motion vector for the current macroblock is chosen to be either MV.,, MV 2 , the average of MV 1 and MV 2 , or the macroblock is coded independently of a reference picture, that is, "intra- coded.” If intra coding will result in the least amount of information to be encoded, the macroblock is coded independently. If, however, coding motion vector MV.,, MV 2 , or their average will require less information to be coded, MV 1 ,MV 2 , or their average motion vector (whichever results in the minimum SAD) is used as the motion vector for the current macroblock.
  • a frame or field search is performed, using the average of MV 1 and MV 2 as the starting motion vector. If both MV 1 and MV 2 are frame motion vectors, a frame search is performed. Otherwise, a field search is performed.
  • System Fig. 12 illustrates a system 1205 consistent with the present invention.
  • a processor 1210 is connected to at least one input/output (I/O) device 1220 via any suitable data connection.
  • I/O device 1220 can be any device capable of passing information to or receiving data from processor 1210.
  • I/O device 1220 may be a digital camcoder connected through IEEE 1394 interface.
  • Processor 1210 may be any commonly available digital processor.
  • Processor 1210 may be a single processor or multiple processors. Faster processors, however, will decrease execution time of the invention.
  • special purpose processors optimized for image data processing may be preferred in certain applications.
  • the system of the present invention also includes memory 1230 capable of storing data processed by processor 1210 and data sent to or received from I/O device 1220.
  • System 1205 may be connected to a display 1240, such as a cathode ray tube (CRT), for displaying information.
  • processor 1210, I/O device 1220, memory 1230, and display 1240 are connected via a standard system bus 1260.
  • Fig. 12 shows an exemplary network where each hardware component may be implemented by conventional, commercially available computer systems components.
  • Fig. 13 illustrates processor 1210 consistent with the present invention.
  • Processor 1210 may comprise one or more memory management units
  • Processor element array 1320 may comprise an array of processor elements, not shown. Processor elements may comprise, for example, a subtraction and adder units for calculating the SAD between the blocks.
  • MMU 1310 may be used to buffer the data for processor element array 1320.
  • Accumulator unit 1330 may be, for example, an adder unit that adds the outputs from processor element array 1325.
  • processor 1210 executes one or more sequences of one or more instructions contained in memory 1230. Such instructions may be read into memory 1230 from a computer-readable medium via input/output device 1220. Execution of the sequences of instructions contained in memory 1230 causes processor 1210 to perform the process steps described herein.
  • processor 1210 executes one or more sequences of one or more instructions contained in memory 1230. Such instructions may be read into memory 1230 from a computer-readable medium via input/output device 1220. Execution of the sequences of instructions contained in memory 1230 causes processor 1210 to perform the process steps described herein.
  • hard-wired circuitry may be used in place of or in combination with software instructions to implement the invention. Thus implementations of the invention are not limited to any specific combination of hardware circuitry and software.
  • Non-volatile media includes, for example, optical or magnetic disks.
  • Volatile media includes dynamic memory, such as memory 1230.
  • Transmission media includes coaxial cables, copper wire, and fiber optics, including the wires that comprise system bus 1260. Transmission media can also take the form of acoustic or light waves, such as those generated during radio-wave and infra-red data communications.
  • Computer-readable media include, for example, a floppy disk, a flexible disk, hard disk, magnetic tape, or any other magnetic medium, a CD-ROM, any other optical medium, punch cards, papertape, any other physical medium with patterns of holes, a RAM, PROM, and EPROM, a FLASH-EPROM, any other memory chip or cartridge, a carrier wave as described hereinafter, or any other medium from which a computer can read.
  • Network signals carrying digital data, and possibly program code, to and from system 1205 through system bus 1260 are exemplary forms of carrier waves transporting the information.
  • program code received by system 1205 may be executed by processor 1210 as it is received, and/or stored in memory 1230, or other non-volatile storage for later execution.

Abstract

Methods, systems, apparatus, and computer program products consistent with the present invention obtain a motion vector between first and second pictures of video image data in a video sequence. Each picture includes a plurality of macroblocks. A first motion vector is determined describing displacement between the first field of a first frame and the first field of a second frame based on a field search (930). A second motion vector describing displacement between the second field of the first frame and the second field of the second frame is determined based on a field search (935). If the difference between the first and second motion vector is less than a threshold (940), a third motion vector describing displacement between the first and second frames is determined based on a frame search (945). In one embodiment of the present invention, the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.

Description

METHODS AND APPARATUS FOR REDUCTIGM3SF
PREDICTION MODES IN MOTION ESTIMATION CROSS-REFERENCE TO RELATED APPLICATIONS
This application claims the benefit of U. S. Provisional Application No. 60/173,410, filed December 28, 1999, entitled "Methods and Apparatus for Motion Estimation in Compressed Domain."
This application is also related to commonly-assigned copending applications Ser. No. 09/497,394, filed February 3, 2000, entitled "Methods and Apparatus for Motion Estimation in Compressed Doman," and Ser. No. 09/497,392, filed February 3, 2000, entitled "Methods and Apparatus for
Motion Estimation Using Neighboring Macroblocks," both of which are hereby expressly incorporated by reference.
BACKGROUND OF THE INVENTION The present invention relates generally to methods and apparatus for motion estimation for video image processing, and in particular, improved methods and apparatus for determining motion vectors between video image pictures with a hierarchical motion estimation technique using block-matching and integral projection data.
Advancements in digital technology have produced a number of digital video applications. Digital video is currently used in digital and high definition TV, camcorders, videoconferencing, computer imaging, and high-quality video tape recorders. Uncompressed digital video signals constitute a huge amount of data and therefore require a large amount of bandwidth and memory to store and transmit. Many digital video systems, therefore, reduce the amount of digital video data by employing data compression techniques that are optimized for particular applications. Digital compression devices are commonly referred to as "encoders"; devices that perform decompression are referred to as "decoders". Devices that perform both encoding and decoding are referred to as "codecs". In the interest of standardizing methods for motion picture video compression, the Motion Picture Experts Group (MPEG) issued a number of standards. MPEG-1 is a compression algorithm intended for video devices having intermediate data rates. MPEG-2 is a compression algorithm for devices using higher data rates, such as digital high-definition TV (HDTV), direct broadcast satellite systems (DBSS), cable TV (CATV), and serial storage media such as digital video tape recorders (VTR). Digital Video (DV) format is another format used widely in consumer video products, such as digital camcorders. The DV format is further explained in the SD Specifications of Consumer-Use Digital VCRs dated December 1994.
A video sequence is composed of a series of still pictures taken at closely spaced intervals in time that are sequentially displayed to provide the illusion of continuous motion. Each picture may be described as a two- dimensional array of samples, or "pixels". Each pixel describes a specific location in the picture in terms of brightness and hue. Each horizontal line of pixels in the two-dimensional picture is called a raster line. Pictures may be comprised of a single frame or two fields.
When sampling or displaying a frame of video, the video frame may be "interlaced" or "progressive." Progressive video consists of frames in which the raster lines are sequential in time, as shown in Fig. 1A. The MPEG-1 standard allows only progressive frames. Alternatively, each frame may be divided into two interlaced fields, as shown in Fig. 1 B. Each field has half the lines in the full frame and the fields are interleaved such that alternate lines in the frame belong to alternative fields. In an interlaced frame composed of two fields, one field is referred to as the "top" field, while the other is'called the "bottom" field. The MPEG-2 standard allows both progressive and interlaced video.
One of the ways MPEG applications achieve data compression is to take advantage of the redundancy between neighboring pictures of a video sequence. Since neighboring pictures tend to contain similar information, describing the difference between neighboring pictures typically requires less data than describing the new picture. If there is no motion between neighboring pictures, for example, coding the difference (zero) requires less data than recoding the entire new picture.
An MPEG video sequence is comprised of one or more groups of pictures, each group of which is composed of one or more pictures of type I-, P-, or B-. Intra-coded pictures, or "l-pictures," are coded independently without reference to any other pictures. Predictive-coded pictures, or "P- pictures," use information from preceding reference pictures, while bidirectionally predictive-coded pictures, or "B-pictures," may use information from preceding or upcoming pictures, both, or neither. Motion estimation is the process of estimating the displacement of a portion of an image between neighboring pictures. For example, a moving soccer ball will appear in different locations in adjacent pictures. Displacement is described as the motion vectors that give the best match between a specified region, e.g., the ball, in the current picture and the corresponding displaced region in a preceding or upcoming reference picture. The difference between the specified region in the current picture and the corresponding displaced region in the reference picture is referred to as "residue".
In general, two known types of motion estimation methods used to estimate the motion vectors are pixel-recursive algorithms and block- matching algorithms. Pixel-recursive techniques predict the displacement of each pixel iteratively from corresponding pixels in neighboring frames. Block- matching algorithms, on the other hand, estimate the displacement between frames on a block-by-block basis and choose vectors that minimize the difference.
In conventional block-matching processes, the current image to be encoded is divided into equal-sized blocks of pixel information. In MPEG-1 and MPEG-2 video compression standards, for example, the pixels are grouped into "macroblocks," each consisting of a 16x16 sample array of luminance samples together with one 8x8 block of samples for each of the two chrominance components. The 16x16 array of luminance samples further comprises four 8x8 blocks that are typically used as input blocks to the compression models.
Fig. 2 illustrates one iteration of a conventional block-matching process. Current picture 220 is shown divided into blocks. Each block can be any size; however, in an MPEG device, for example, current picture 220 would typically be divided into blocks each consisting of 16x16-sized macroblocks. To code current picture 220, each block in current picture 220 is coded in terms of its difference from a block in a previous picture 210 or upcoming picture 230. In each iteration of a block-matching process, current block 200 is compared with similar-sized "candidate" blocks within search range 215 of preceding picture 210 or search range 235 of upcoming picture 230. The candidate block of the preceding or upcoming picture that is determined to have the smallest difference with respect to current block 200 is selected as the reference block, shown in Fig. 2 as reference block 250. The motion vectors and residues between reference block 250 and cur-rent block 200 are computed and coded. Current picture 220 can be restored during decompression using the coding for each block of reference picture 210 as well as motion vectors and residues for each block of current picture 220. The motion vectors associated with the preceding reference picture are called forward motion vectors, whereas those associated with the upcoming reference picture are called backward motion vectors.
Difference between blocks may be calculated using any one of several known criterion, however, most methods generally minimize error or maximize correlation. Because most correlation techniques are computationally intensive, error-calculating methods are more commonly used. Examples of error-calculating measures include mean square error (MSE), mean absolute distortion (MAD), and sum of absolute distortions (SAD). These criteria are described in Joan L. Mitchell et al., MPEG Video Compression Standard, International Thomson Publishing (1997), pp. 284-86. A block-matching algorithm that compares the current block to every candidate block within the search range is called a "full search". In general, larger search areas generally produce a more accurate displacement vector, however, the computational complexity of a full search is proportional to the size of the search area and is too slow for some applications. A full search block-matching algorithm applied on a macroblock of size 16x16 pixels over a search range of + N pixels with one pixel accuracy, for example, requires (2xN+1 )2 block comparisons. For N=16, 1089 16x16 block comparisons are required. Because each block comparison requires 16x16, or 256, calculations, this method is computationally intensive and operationally very slow. Techniques that simply reduce the size of the search area, however, run a greater risk of failing to find the optimal matching block.
As a result, there has been much emphasis on producing fast algorithms for finding the matching block within a wide search range. Several of these techniques are described in Mitchell et al., pp. 301-11. Most fast search techniques gain speed by computing the displacement only for a sparse sampling of the full search area. The 2-D logarithmic search, for example, reduces the number of computations by computing the MSE for sparsely-spaced candidates, and then successively searching the closer spaced candidates surrounding the best candidate found in the previous iteration. In a conjugate direction search, the algorithm searches in a horizontal direction until a minimum distortion is found. Then, proceeding from that point, the algorithm searches in a vertical direction until a minimum is found. Both of these methods are faster than a full search but frequently fail to locate the optimal matching block.
Another method for reducing the amount of computation in a full search is to calculate the displacement between blocks using integral projection data rather than directly using spatial domain pixel information. An integral projection of pixel information is a one-dimensional array of sums of image pixel values along a horizontal or vertical direction. Using two 1-D horizontal and vertical projection arrays rather than the 2-dimensional array of pixel information in a block-matching algorithm significantly reduces the number of computations of each block-matching. This technique is described in a paper by I.H. Lee and R.H. Park entitled "Fast Block Matching Algorithms Using Integral Projections," Proc. Tencon '87 Conf., 1987, pp. 590-594.
Other methods for overcoming the disadvantages of a full search have employed hierarchical search techniques. In a first stage, for example, a coarse search is performed over a reasonably large area. In successive stages of a conventional hierarchical search, the size of the search area is reduced. One example of a three-step hierarchical search is described in H. M. Jong et al., "Parallel Architectures for 3-Step Hierarchical Search Block- Matching Algorithm," IEEE Trans. On Circuits and Systems for Video Technology, Vol. 4, August 1994, pp. 407-416. The hierarchical search described in Jong et al. is inadequate for some applications because the coarse search does not utilize all of the pixel information and thus may form an incorrect starting point for the finer search. Another type of hierarchical search is disclosed in U.S. Patent Application No. 09/093,307, to Chang et al., filed on June 9, 1998, entitled "Hierarchical Motion Estimation Process and System Using Block-Matching and Integral Projection" ("Chang l"), the contents of which are hereby expressly incorporated by reference.
Fast motion estimation techniques are particularly useful when converting from one digital video format to another. Digital video is stored in encoded, compressed form. When converting from one format to another using conventional devices, the digital video must first be decompressed and decoded to its original pixel form and then subsequently encoded and compressed for storage or transmission in the new format. Conversion techniques requiring that digital video be fully decoded are very time- consuming.
The present invention provides improved methods and apparatus for performing motion estimation using a multi-tiered search technique that minimizes the number of operations while maintaining the quality of the motion vector. In addition, the present invention provides methods and apparatus for motion estimation that allow digital video data conversion from one format to a second format without full reduction to pixel data thereby greatly reducing the time required for data format conversion.
SUMMARY OF THE INVENTION Methods, systems, apparatus, and computer program products consistent with the present invention obtain a motion vector between first and second pictures of video image data in a video sequence. Each picture includes a plurality of macroblocks. A first motion vector is determined describing displacement between the first field of a first frame and the first field of a second frame based on a field search. A second motion vector describing displacement between the second field of the first frame and the second field of the second frame is determined based on a field search. If the difference between the first and second motion vector is less than a threshold, a third motion vector describing displacement between the first and second frames is determined based on a frame search. In one embodiment of the present invention, the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
BRIEF DESCRIPTION OF THE DRAWINGS The accompanying drawings, which are incorporated in and constitute a part of this specification, illustrate the invention and, together with the description, serve to explain the principles of the invention.
Fig. 1A is a diagram illustrating a frame in progressive video; Fig. 1 B is a series of diagrams illustrating a frame divided into two interlaced fields; Fig. 2 is a diagram illustrating a prior art block-matching technique;
Fig. 3 is a diagram showing a system for converting digital video from a DV format into an MPEG format;
Fig. 4 is a flow diagram showing a method of determining motion vectors consistent with the present invention; Fig. 5 is a diagram showing a video sequence; Fig. 6 demonstrates how 8-point vertical integral projections may be calculated from 8x8 pixel data;
Fig. 7a illustrates, for example, that 8-point vertical projection data may be calculated either by summing columns of an 8x8 array of pixel data, or by performing a 1-D 8-point iDCT on row 0 of DCT coefficients;
Fig. 7b illustrates, for example, that 2-point vertical projection data may be calculated either by summing four columns of an 8x8 array of pixel data, or approximately by performing a l-D 2-point iDCT on DCT coefficients C0ι0 and
Fig. 8 shows a method for searching in both the horizontal and vertical directions using projection data;
Fig. 9 is a flow diagram showing a method of determining motion vectors consistent with the present invention;
Fig. 10 is a chart describing one method for determining motion vectors using motion vectors for neighboring macroblocks consistent with the present invention;
Fig. 11 is a chart illustrating pictorially one example of how motion vectors may be determined using motion vectors for neighboring macroblocks consistent with the present invention; Fig. 12 is a diagram of a system consistent with the present invention; and
Fig. 13 is a diagram of a processor consistent with the present invention.
DESCRIPTION OF THE PREFERRED EMBODIMENTS Reference will now be made in detail to preferred implementations consistent with the present invention, an example of which is illustrated in the accompanying drawings.
Motion estimation techniques compress the amount of data needed to represent a digital video sequence by encoding one picture in terms of its difference from a neighboring picture rather than encoding each picture in its entirety. When the sequence is replayed, the decoder reconstructs the current picture using the reference picture and the motion vectors.
There are some instances where it may be desired to convert video sequences currently in one format into another format. One method for doing so is to completely decode the video sequences into pixel information using a decoder and recode the pixel information into the second format using an encoder. When encoding in the second format, motion estimation is performed in the pixel domain on pixel information.
Fig. 3 shows an example of a system for converting digital video from a DV format into an MPEG format. In the example shown in Fig. 3, digital video is received in compressed format and deframed (step 310). The resulting data is subjected to variable length decoding (step 320), inverse quantization (step 330), and inverse discrete cosine transform (iDCT) (step 340). The result following the iDCT is pixel information. To recode the pixel information in a second format (in this case,
MPEG), the pixel information is compressed using motion estimation (step 350), a discrete cosine transform (DCT) (step 360), quantization (step 370), and variable length coding (step 380). The result is video data in the second format, in this case, MPEG. Transcoders are devices that convert digital video from one format to another. For example, transcoders perform the decoding and encoding process such as the example shown in Fig. 3. One method for improving the performance of transcoders is to develop methods for converting one format of data to a second format without performing the entire decoding and re- encoding processes. As shown in Fig. 3, the computation-intensive steps of iDCT and DCT may be eliminated if a transcoder can perform motion estimation on compressed data. In step 390, for example, motion estimation is performed on decoded data that has not yet undergone the iDCT stage. Data in step 390 may still be described as "compressed" and requires different calculations than pixel information. In a method consistent with the present invention, a motion vector is estimated for each block of a current picture with respect to a reference picture using a multi-stage operation. As explained in more detail below, the motion estimation methods described herein may be used in both pixel and compressed domains. In a first stage, an application implementing the process of the present invention coarsely searches a reference frame to obtain a candidate supermacroblock that best approximates a supermacroblock in a current frame. In a second stage, the supermacroblock is divided into a plurality of macroblock components. The first macroblock of each supermacroblock in a current frame is used as a starting point for a second search. The motion vector resulting from the second search may be further fine-tuned by an optional third search.
If motion vectors are determined for field data, a test is performed to determine whether a motion vector for the frame comprised of the two fields would produce a better result. If a difference between the field motion vectors is less than a dynamic threshold, a frame search is performed, and the motion vector for the frame may be used instead of the motion vector for the fields. Motion vectors for the remaining macroblocks in a supermacroblock are estimated based on neighboring blocks. A. Multi-Tiered Motion Estimation Process with Frame Data
In one embodiment, methods consistent with the present invention are used to estimate motion vectors in a transcoder for converting digital video image data in the DV format to data in an MPEG-1 or MPEG-2 progressive format. Both MPEG-1 and MPEG-2/progressive formats are frame-based, therefore, in this embodiment, motion vectors are calculated for frames of data.
Fig. 4 contains a flow chart illustrating a method for estimating motion vectors for each macroblock of a current picture using a multi-tiered searching method consistent with the present invention. Data representing a current picture is divided into data representing supermacroblocks. If motion estimation is performed in the pixel domain (step 350 of Fig. 3), the data will be pixel data. If motion estimation is performed in the compressed domain (step 390 of Fig. 3), motion estimation will be performed using DCT coefficient data representing supermacroblocks. Starting with a first supermacroblock (step 410), the reference picture is searched for a candidate supermacroblock that best matches the current supermacroblock (step 415). A "best" candidate supermacroblock is defined as the supermacroblock that produces the best comparison values, that is, the least error or greatest correlation when compared with the current supermacroblock using any known error calculation or correlation determination method. For the sake of convenience, the following exemplary embodiments are described using SAD, however, it should be understood that in each example, other error calculation or correlation determination methods may be used instead. The search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance.
A best candidate supermacroblock may be obtained using any available searching technique including, for example, the full search and other searches described above. In one embodiment of the present invention, the "best" candidate supermacroblock is selected using the motion estimation method described in U.S. Patent Application No. 09/081 ,279, to Chang et al. ("Chang II"), filed on May 20, 1998, entitled "Motion Estimation Process and System Using Sparse Block-Matching and Integral Projection," the contents of which are hereby expressly incorporated by reference.
In another embodiment of the present invention, described in more detail below, "best" candidate supermacroblocks are selected using a telescopic search. Telescopic searches use the motion vector determined for a preceding picture to decrease the search range. As described above, MPEG video sequences are composed of a series of still pictures or "frames" taken at closely spaced intervals in time that are sequentially displayed to provide the illusion of continuous motion. Each group of pictures is composed of three types of pictures, l-pictures (intra-coded), P-pictures (predictive-coded), and B-pictures (bidirectionally-coded), as shown in Fig. 5. l-pictures are coded independently, without reference to the other pictures. P- and B- pictures are compressed by coding the differences between the picture and reference I- or P- pictures. P- pictures are coded with response to preceding I- or P- pictures, while B- pictures may be coded from preceding or succeeding pictures.
In a telescopic search, the l-picture is coded independently. Then, the l-picture is used as a reference frame. Candidate supermacroblocks in the I reference frame that best match supermacroblocks in the B., picture are found using, for example, a full search, and forward motion vectors for the B1 picture are determined. The search for the forward motion vector of the B2 picture begins with the motion vector for the B1 picture and the forward motion vector of the P picture is based on the forward motion vector of the B2 picture. In a similar fashion, the backward motion vector of the B1 picture is determined by a search beginning at the backward motion vector for the B2 picture.
Regardless of the search technique used, the current supermacroblock and candidate supermacroblocks may be compared using projection data to further reduce the number of necessary calculations. For example, during any block-matching search technique, each time the current block is compared with a candidate block, a difference is calculated. Using sum of absolute distortions (SAD) as the matching criteria, for example, the differences may be defined as follows:
Λ/-1 M-1
SAD(i,j) = ∑ ∑ I r(x,y) -s(x+i,y+j) \ x=0 y=0
for -A < i ≤A and -B < j <+B, where r is the current block, s is the candidate block, NxM is the block size, and A and B define the search range. The (ij) pair that produces a minimum value for SAD (ij) defines the motion vector of the current block. A motion vector of (1 ,1 ), for example, means that a block in the reference frame one pixel horizontally to the right and one pixel vertically below the corresponding location of current block in the reference frame closely resembles current block.
When comparing an NxN current block to an NxN candidate block using pixel information and a difference calculation such as SAD described above, NxN calculations are required. It is possible, however, to compare the two blocks using other information, such as integral projections. An integral projection of pixel information is a sum of some number of image pixel values along a certain horizontal or vertical direction. Fig. 6, for example, shows how to calculate 8-point vertical integral projections from 8 x 8 pixel data. Integral projection information can be obtained by calculating one- dimensional integral projection arrays from either pixel information or discrete cosine transform (DCT) coefficient data. Fig. 7a illustrates, for example, that 8-point vertical projection data may be calculated either by summing columns of an 8x8 array of pixel data, or by performing a 1-D 8-point iDCT on row 0 of DCT coefficients, since these two calculations produce the same result.
Similarly, as illustrated in Fig. 7b, the 2-point vertical projection data may be calculated either by summing four columns of an 8x8 array of pixel data, or approximately by performing a 1-D 2-point iDCT on DCT coefficients C00 and
Cι,o- If integral projection information is calculated, the resulting sums may then be used in the difference calculation. For example, using sum of absolute distortions (SAD) as the matching criteria, and M-point vertical projection difference is then calculated as follows:
N-1
SADv(i,j) = ∑\ Rv(x) -S x+i,j) \ x=0
where -A ≤ i ≤ +A, -B < j < +B, andy is an integer multiple of Z. In addition, Rv(x) is the vertical projection for the xth column of the current block and Sv(x+ij) is the vertical projection or sum of the (x+i)th column of the candidate block starting at row/
Referring again to Fig. 4, after a best supermacroblock in the reference frame is determined, a motion vector for each macroblock (MB) in the current supermacroblock is determined. The current supermacroblock may consist of MxN macroblocks, however, the example described herein assumes that each supermacroblock consists of four macroblocks in a square configuration. For each macroblock, the best candidate macroblock in a reference frame may be determined by either searching or estimation (step 420). In embodiments consistent with the present invention, for a first macroblock of the supermacroblock in the current frame, the best candidate macroblock in a reference frame is determined using a second search technique (step 430). The motion vector found in the first search (step 415) is used as the starting point of the second search. The second search technique used may be any conventional search technique such as, for example, full search. In one embodiment of the present invention, the "best" candidate macroblock is selected using the method described in Chang II. As mentioned above, the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but requires additional computations that may affect performance.
Generally, most search techniques used will search for the best candidate macroblock in both the horizontal and vertical directions. The search process can be further improved by using projection data. Fig. 8 illustrates one example of a search process for a best candidate 8x8 macroblock using 8-point vertical and horizontal projection data. As shown on the left of Fig. 8, the frame of data is divided into horizontal strips of 8 rows. Vertical projection data is computed for each strip. To calculate 8-point vertical frame projections on compressed data, a one-dimensional 8-point horizontal iDCT may be applied to the first row of the 8x8 DCT block. The candidate macroblock in each strip that best matches the current macroblock is determined by, for example, locating the macroblock that produces the lowest SAD when compared to the current macroblock. A best candidate macroblock for each strip is determined.
The frame is then searched in the vertical direction using horizontal projection data as shown on the right side of Fig. 8. To obtain 8-point horizontal frame projections, a 1-D 8-point vertical iDCT may be applied to the first column of the 8x8 DCT block. Beginning at the best candidate macroblock for each strip, the frame is searched vertically +/- 4 pixels for a best candidate in the vertical column defined by the best candidate from the horizontal search. The macroblock in the reference frame that results in the lowest SAD among all macroblocks searched by the vertical search when compared with the current macroblock is used to compute the motion vector.
The results of the second search may be used as a starting point for an additional, optional third search (step 435). The third search will be performed using the best candidate macroblock determined in step 430 as the starting macroblock for this search stage. As mentioned above with respect to other searches described, the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance. However, at this stage, the objective is to further fine tune the motion vector. Therefore, a search range of approximately +/- 0.5 pixels is recommended.
The process continues with step 455 which is the Intra/NoMV decision. The Intra mode means the macroblock is encoded independently without reference to the reference pictures. The SAD for INTRA mode is the difference between the pixel data of the current MB and the average value of that MB. It can be expressed by
SAD INTRA = \p n i(χx> y v) I ■~ P r> avg
Figure imgf000017_0001
1 JV-1 -1 where F ,y) is the pixel value of the current MB, Pavg = ,-∑∑ Y) is
N M X=Q y=0 the average pixel value of the MB, and NxM is the block size. When the SAD for intra-coding the macroblock is small, Intra mode, that is, coding the macroblock independently or without reference to another macroblock, may produce better image quality than motion-predicted mode. Therefore, the Intra mode is given higher priority over encoding the motion vector when the SAD is small.
The NoMV mode is a special case when the motion vector is zero. Since it takes the fewest number of bits to encode the zero motion vector, the zero motion vector is given higher priority than other motion vectors. In step 458, the motion vector is stored or output.
If the process has just determined the motion vector for the last macroblock in the current supermacroblock (step 460), the process continues with step 465. Otherwise, the process continues by determining motion vectors for the other macroblocks in the current supermacroblock (step 420). Methods consistent with the present invention may determine motion vectors for the second and succeeding macroblocks of a supermacroblock based on the motion vectors from neighboring macroblocks (step 425). The process may determine these motion vectors based on any suitable combination of neighboring motion vectors including, for example, the average of two nearest neighbors. In one embodiment of the current invention, the motion vectors are determined using the method of utilizing motion vectors from neighboring motion vectors described below in section C. When the process has determined the motion vector for the last macroblock in the current supermacroblock, the process continues with step 465. If the process has determined the motion vectors for the last supermacroblock in a given frame or field (step 465), the process terminates. Otherwise, the process chooses a next supermacroblock (step 470) and continues with step 415. B. Multi-Tiered Motion Estimation Process with Field Data
As mentioned above, the MPEG-2 standard allows both progressive and interlaced video. Interlaced video may be encoded as two fields, a "top" field and a "bottom" field, or a frame. Fig. 9 contains a flow chart illustrating a method for estimating motion vectors for each macroblock of a current picture when the picture is encoded as two fields. As described above with respect to Fig. 4, data representing a current picture is divided into data representing supermacroblocks. If motion estimation is performed in the pixel domain (step 350 of Fig. 3), the data will be pixel data. If motion estimation is performed in the compressed domain
(step 390 of Fig. 3), motion estimation will be performed using DCT coefficient data representing supermacroblocks.
Starting with a first supermacroblock (step 910), the reference picture is searched for a candidate supermacroblock that best matches the current supermacroblock (step 915). As described above with respect to step 415, a best candidate supermacroblock may be obtained using any available searching technique including, for example, a full search or a telescopic search. In one embodiment of the present invention, the "best" candidate supermacroblock is selected using the motion estimation method described. Regardless of the search technique used, the current supermacroblock and candidate supermacroblocks may be compared using projection data to further reduce the number of necessary calculations, as described above. In step 915, integral projection information can be obtained by calculating one- dimensional integral projection arrays from either pixel information or discrete cosine transform (DCT) coefficient data.
After a best supermacroblock in the reference frame is determined, a motion vector for each macroblock (MB) in the current supermacroblock is determined. For a first macroblock of the supermacroblock in the current frame (step 920), the best candidate macroblock in a reference frame is determined using a second search technique (step 930). The motion vector found in the first search (step 915) is used as the starting point of the second search. The second search technique used may be any conventional search technique such as, for example, full search. In one embodiment of the present invention, the "best" candidate macroblock is selected using the technique described in Chang II. As mentioned above, the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance.
Generally, most search techniques used will search for the best candidate macroblock in both the horizontal and vertical directions. If converting from DV format to MPEG-2 interlaced fields, the underlying video may be encoded either as 8x8 frame data or 4x8 fields of data. Fields may be encoded separately or two fields may be taken together and treated as an 8x8 frame. Frame data is compressed using an 8x8 DCT mode whereas field data is generally compressed using a 2x4x8 DCT mode. The DV format specification recommends that the 8x8 DCT mode be used when the difference between two fields is small. By contrast, the 2x4x8 DCT mode should be used when two fields differ greatly. Case I: 2x4x8 DCT mode In one embodiment, the second search is performed using video field data that has been encoded in 2x4x8 DCT mode. To find a best candidate macroblock in the compressed domain, a reference picture is divided into horizontal strips of 8 rows, and is searched first in the horizontal direction using 8-point vertical field projection data beginning at the motion vector obtained from the first search. The top and bottom fields are searched separately. To obtain the 8-point vertical field projections for the top field, a one-dimensional 8-point horizontal iDCT is performed on the first row of the top 4x8 DCT block. The top 4x8 DCT block can be found by adding the sum 4x8 DCT block with the difference 4x8 DCT block. The sum 4x8 DCT block is the upper 4x8 portion of the 8x8 block whereas the difference 4x8 DCT block is the lower 4x8 portion of the 8x8 block as defined in the DV format. To obtain 8-point vertical field projections for the bottom field, a one-dimensional 8-point horizontal iDCT is performed on the first row of the bottom 4x8 DCT block. The bottom 4x8 DCT block can be found by subtracting the difference 4x8 DCT block from the sum 4x8 DCT block.
Beginning at the best candidate in each horizontal strip, a vertical search is performed. When calculating the SAD between each comparison, horizontal field projections for both the top and bottom fields are used. For example, 4-point horizontal field projections for the top field are determined by taking a one-dimensional (1-D) 4-point vertical iDCT of the first column of the top 4x8 DCT block. Four-point horizontal field projections for the bottom field are obtained by taking a 1-D 4-point vertical iDCT of the first column of the bottom 4x8 DCT block. The projections are used when computing the SAD and determining the best candidate macroblock.
The best candidate of all the candidates in the vertical search is used to determine the motion vector. This search is performed separately for both the top and bottom fields. The motion vector MVtt refers to the motion vector from the top field in the current frame to the top field in the reference frame, i.e top-top (TT). Correspondingly, motion vector MVbb is the motion vector from the bottom field in the current frame to the bottom field in the reference frame, i.e. bottom-bottom (BB) It should be noted that the vertical and horizontal searches are interchangeable, that is, the horizontal search may be performed first and the vertical search second.
Case HA: 8x8 DCT mode
In another embodiment, the second search is performed using video field data that has been encoded in 8x8 DCT mode. To find a best candidate macroblock in the compressed domain, a reference picture is divided into vertical strips of 8 columns, and is searched first in the vertical direction using 4-point horizontal field projection data beginning at the motion vector obtained from the first search. The top and bottom fields are searched separately. To obtain the 4-point horizontal field projections for the top field, even outputs of a one-dimensional 8-point vertical iDCT of the first column of an 8x8 DCT block are chosen. The odd outputs of the 1-D 8-point vertical iDCT of the first column of the 8x8 DCT block are used as the 4-point horizontal field projections for the bottom field. The horizontal field projects are used in calculating the SAD between each block comparison and determining best candidate macroblocks in each column.
Beginning at the best candidate in each vertical strip, a horizontal search is performed in the spatial domain separately for both the top and bottom fields. The search range is +/- 4 pixels. The horizontal search may be performed using, for example, a full search algorithm. The SAD of spatial domain pixel information between the reference frame and the current frame is calculated for each candidate macroblock in the search range. Alternatively, the horizontal search may be performed using other search methods, such as logarithmic search.
The best candidate of all the candidates in the horizontal search is used to determine the motion vector. This search is performed separately for both the top and bottom fields, to find MVtt and MVbb. Case MB: 8x8 DCT mode
In yet another embodiment consistent with the present invention, the second search is also performed using video field data that has been encoded in 8x8 DCT mode. However, to find a best candidate macroblock in the compressed domain, a reference picture is divided into horizontal strips of 8 rows, rather than vertical strips of 8 columns, and is searched first in the horizontal direction using 8-point vertical field projection data beginning at the motion vector obtained from the first search. The top and bottom fields are searched separately. In this embodiment, however, the pixel information is first derived by iDCT, then the 8-point vertical field projections for the top field are computed by summing the even rows of the macroblock. The 8-point vertical field projections for the bottom field are determined by summing the odd rows of the macroblock. The SADs of vertical field projections, instead of the SADs of pixel information in Case II A, are used to determine a best candidate for each horizontal strip. Beginning at the best candidate in each horizontal strip, a vertical search is performed. When calculating the SAD between each comparison, horizontal field projections for both the top and bottom fields are used. In one example, 4-point horizontal field projections for the top field are determined by taking the even outputs of a 1-D 8-point vertical iDCT of the first column of the 8x8 DCT block. Four-point horizontal field projections for the bottom field are obtained by taking the odd outputs of a 1-D 8-point vertical iDCT of the first column of the 8x8 Dct block. The projections are used when computed the SAD and determined the best candidate macroblock for each column. The best candidate of all the candidates in the vertical search is used to determine the motion vector. This search is performed separately for both the top and bottom fields. The motion vector MVtt refers to the motion vector from the top field in the current frame to the top field in the reference frame, i.e top-top (TT). Correspondingly, motion vector MVbb is the motion vector from the bottom field in the current frame to the bottom field in the reference frame, i.e. bottom-bottom (BB).
It should be noted that the vertical and horizontal searches are interchangeable, that is, the vertical search may be performed first and the horizontal search second. Returning to Fig. 9, the results of the second search may be used as a starting point for an additional, optional third search such as, for example, a spatial domain search (step 935). The motion vector for the top block will be used as a starting point for a third search for the top block and the motion vector for the bottom block will be used as a starting point for a third search for a bottom block. The result of step 935 will be two motion vectors, MVtt
(motion vector for the current top field) and MVbb (motion vector for the current bottom field).
As mentioned above with respect to the other searches described, the search range over which the search is performed may vary. Generally, a larger search range will increase accuracy but result in additional computations that may affect performance. However, at this stage, the objective is to further fine tune the motion vector and therefore a search range of approximately .5 pixels is preferred.
Since the underlying data is interlaced field data, a motion vector for the frame comprised of the top and bottom fields may also be calculated. In predicting motion vectors for field data, the MPEG-2 standard suggests that motion vectors should be determined for all of top-top (TT), bottom-bottom (BB), top-bottom (TB), bottom-top (BT) field comparisons, as well as the frame (i.e. the two fields taken together). While all four vectors may be determined, in one embodiment of the present invention, the steps of calculating motion vectors for TB and BT are eliminated as one means of further reducing calculations. In methods consistent with the present invention, for example, the frame search step is not performed if it is determined to be unnecessary or unlikely to improve the quality of the motion vector. In step 940, the present invention includes a test for determining whether a frame prediction search is necessary. In step 940, if the absolute difference between motion vectors for the top and bottom fields, MVtt and MVbb, is less than a threshold, the frame search should be performed. Frame prediction mode may provide better matching between a reference frame and a current frame when the reference frame is interpolated for half-pixel motion vectors. In frame prediction mode, only one frame motion vector needs to be encoded, instead of two field motion vectors in field in field prediction modes. This decision may be represented mathematically, for example, as if |MVtt - MVbb| < threshold, the frame search is worth performing. A suitable threshold may be calculated or described in any number of ways, however, in one embodiment of the present invention, the threshold is dynamic. A dynamic threshold changes in response to the changing information in either preceding or succeeding fields. For example, consistent with the present invention, the threshold may be calculated as the weighted sum of the average of the absolute difference of the motion vectors for TT and BB of previous frames. This calculation may be represented mathematically as:
Threshold = 1/2 * avg |MVtt - MVbb|(N-1 ) + 1/4 * avg |MVtt - MVbb| (N-2) +
1/8 * avg |MVtt - MVbb| (N-3) + 1/16 * avg |MVtt - MVbb| (N-4) +
where avg |MVtt - MVbb| (N) is the average of the absolute difference of MVtt and MVbb for the Nth frame.
If it is determined in step 940 that frame prediction is desirable, a frame search is performed in step 945. The search in step 945 may be performed by any technique described earlier in association with steps 915, 930, or 935. In one embodiment of the present invention, the search performed is a spatial domain search similar to the search described in step 935. The starting motion vector for this frame search may be the motion vector for either the top field or the bottom field. In one embodiment consistent with this invention, the starting vector is chosen to be the average of motion vectors for the top and frame prediction, i.e. (MVtt + MVbb)/2, and the search range is +/- 1.5 pixels. Furthermore, a spatial domain search may be performed over any possible search range, however, generally at this point in the process there is little to be gained by using a large search range. In step 945, the frame search may be further improved by using a half-pel estimation process instead of full search.
Generally, when coding video sequences using a combination of frame and field data using conventional techniques, a higher priority is generally given to frame prediction data over field prediction data. This decision is known as the Frame/Field Decision (step 950).
The process continues with step 955 which is the Intra/NoMV decision. The Intra mode means the macroblock is encoded independently without reference to the reference pictures. When the SAD is small, Intra mode may produce better image quality than motion predicted mode. Therefore, the Intra mode is given higher priority when the SAD is small. The NoMV mode is a special case when the motion vector is zero. Since it takes the fewest number of bits to encode the zero motion vector, the zero motion vector is given higher priority than other motion vectors.
In step 958, the motion vector is stored or output. If the process has just determined the motion vector for the last macroblock in the current supermacroblock (step 960), the process continues with step 965.
Otherwise, the process continues by determining motion vectors for the other macroblocks in the current supermacroblock (step 920).
Methods consistent with the present invention determine motion vectors for the second and succeeding macroblocks of a supermacroblock by estimation using the motion vectors from neighboring macroblocks (step 925).
The process may determine the motion vectors for the second and succeeding macroblocks using any suitable combination of neighboring motion vectors including, for example, the average of two nearest neighbors.
In one embodiment of the current invention, the motion vectors are determined using the method of utilizing motion vectors from neighboring motion vectors described in section C below.
When the process has determined the motion vector for the last macroblock in the current supermacroblock, the process continues with step
965. If the process has determined the motion vectors for the last supermacroblock in a given frame or field (step 965), the process terminates.
Otherwise, the process chooses a next supermacroblock (step 970) and continues with step 915.
C. Determining Motion Vectors Based On Motion Vectors for Neighboring Macroblocks In a typical motion estimation process, each frame or field is encoded using multiple motion vectors, one for each of the multiple macroblocks in the frame or field. Any method of estimating motion vectors for a frame or field may be improved by determining some of the motion vectors using motion vectors for neighboring macroblocks consistent with the present invention. By determining some of the motion vectors in this manner, some computations are avoided. Consistent with the present invention, for each macroblock in a frame or field, a decision is made whether to obtain the motion vector for that macroblock by performing a regular search or by estimation based on the motion vectors for neighboring macroblocks that have already been calculated. Fig. 10 shows one example of a method for determining motion vectors for each macroblock in a frame or field that consists of 16 x 6 macroblocks. In Fig. 10, to obtain the motion vector for macroblocks whose number appears in regular type, a regular search (step 930 to step 958) is performed. If the number of a macroblock appears in shaded, italic type with no underline, the motion vector for that macroblock is obtained based on the motion vectors of the left and right neighboring macroblocks. If the number appears underlined, the motion vector for that macroblock is obtained based on the motion vectors for macroblocks above and below the current macroblock. The numbers also indicate the order in which the motion vectors are determined.
For example, in Fig. 10, the first motion vector to be determined is for the macroblock in the upper left corner labeled "1". To obtain this motion vector, a regular search is performed. Next, a regular search is performed to obtain the motion vector for macroblock "2". The search may be performed, for example, beginning at the motion vector determined in step 915 for supermacroblock #2 and performing steps 930 through 958. At this point, two motion vectors have been obtained. The motion vector for macroblock "3" may be determined based on the motion vectors for macroblocks "1" and "2", that is, the left and right neighbors. This process continues for the entire first row. If, as shown in Fig. 10, there is an even number of macroblocks in the first row, the last macroblock in the first row is determined by performing a regular search, since there will be no "right neighbor" motion vector.
Following the last macroblock in the first row, the process determines the motion vector for the first macroblock in the third row. By determining the motion vectors for the third row before the second row, the entire second row of motion vectors may be determined using previously determined motion vectors. As shown in Fig. 10, after the motion vector for macroblock "17" is determined, the motion vector for macroblock "18" may be determined based on the motion vector for macroblocks "1" and "17", that is, the upper and lower neighboring macroblocks to macroblock "18". The motion vector for macroblock "19" is determined using a search. Following this determination, however, the motion vectors for macroblocks "20", "21", and "22" may be determined based on previously determined motion vectors. As shown in Fig. 10, the motion vector for macroblock "20" is determined based.on upper and lower motion vectors for macroblocks "2" and "19" and motion vectors for macroblocks "21" and "22" are determined based on the motion vectors for left and right neighboring macroblocks "18" and "20" and "17" and "19", respectively.
The motion vectors for rows 2 and 3 may be determined in this order. In an alternative embodiment, motion vectors for the second row may be determined after determining motion vectors for the entire third row. Motion vectors for each macroblock in the frame or field are determined in this manner according to Fig. 10.
Fig. 11 shows one method for determining motion vectors based on previously determined motion vectors. As stated previously, motion vectors for some macroblocks may be determined based on the motion vectors for left and right neighboring macroblocks or upper and lower neighboring macroblocks. Each set of motion vectors may be, for example, averaged together to get a new motion vector. In one embodiment consistent with the present invention, previously determined motion vectors are used to determine a motion vector for the current macroblock according to the chart shown in Fig. 11. For example, MV1 and MV2 represent motion vectors for the left and right, or upper and lower, neighboring macroblocks. MV→ and MV2 may each be a motion vector either for a macroblock in a frame or a field. If either MV1 and MV2 are field vectors, the vertical component of the motion vector is converted into frame units by, for example, multiplying by 2, before Y is calculated. ln one embodiment of the present invention, a motion variation, Y, is calculated. In this embodiment, Y = |MV1 - MV2 1, which may also be expressed mathematically as:
Figure imgf000029_0001
If, for example, MV1 = (χ.,,y2) = (1 ,1 ) and MV2 = (x^) = (2,4), then Y = ΪO . Using this formula for Y, suitable thresholds T.,, T2, and T3 include, for example, 1 , 2, and 3, respectively.
If other formulas are used to calculate Y, other thresholds may be necessary. For example, the maximum of the x and y component differences may be alternatively used as Y. Y = max[|x1 - x2| , |y1 - y2|]. Other suitable threshold equations include, for example, Y = (x., - x2)2 + (y1 - y2)2 and Y = |x1
- χ 2| + I y ι - y21 -
If Y = 0 (Case 0), the motion vector, MV., is chosen as the motion vector for the current macroblock. In an alternative embodiment, the motion vector for MV2 is chosen.
In Case 1 of Fig. 11 , Y is between a range of 0 and a first threshold, T.,. In Case 1 , the motion vector for the current macroblock is chosen to be either MV1 or MV2, or the macroblock is coded independently of a reference picture, that is, "intra-coded." If intra coding will result in the least amount of information to be encoded, the macroblock is coded independently. If, however, coding motion vector MV1 or MV2 will require less information to be coded, MV1 or MV2 (whichever results in the minimum SAD) is used as the motion vector for the current macroblock.
In Case 2 of Fig. 11 , Y is between a range of T1 and a second threshold, T2. In Case 2, the motion vector for the current macroblock is chosen to be either MV.,, MV2, the average of MV1 and MV2 , or the macroblock is coded independently of a reference picture, that is, "intra- coded." If intra coding will result in the least amount of information to be encoded, the macroblock is coded independently. If, however, coding motion vector MV.,, MV2, or their average will require less information to be coded, MV1,MV2, or their average motion vector (whichever results in the minimum SAD) is used as the motion vector for the current macroblock.
If Y is between a range of T2 and a third threshold, T3, a frame or field search is performed, using the average of MV1 and MV2 as the starting motion vector. If both MV1 and MV2 are frame motion vectors, a frame search is performed. Otherwise, a field search is performed.
If Y is greater than T3, a regular search is performed. D. System Fig. 12 illustrates a system 1205 consistent with the present invention.
As shown in Fig. 12, a processor 1210 is connected to at least one input/output (I/O) device 1220 via any suitable data connection. I/O device 1220 can be any device capable of passing information to or receiving data from processor 1210. By way of example only, I/O device 1220 may be a digital camcoder connected through IEEE 1394 interface. Processor 1210 may be any commonly available digital processor. Processor 1210 may be a single processor or multiple processors. Faster processors, however, will decrease execution time of the invention. Moreover, special purpose processors optimized for image data processing may be preferred in certain applications.
The system of the present invention also includes memory 1230 capable of storing data processed by processor 1210 and data sent to or received from I/O device 1220. System 1205 may be connected to a display 1240, such as a cathode ray tube (CRT), for displaying information. Processor 1210, I/O device 1220, memory 1230, and display 1240 are connected via a standard system bus 1260. Fig. 12 shows an exemplary network where each hardware component may be implemented by conventional, commercially available computer systems components.
Fig. 13 illustrates processor 1210 consistent with the present invention. Processor 1210 may comprise one or more memory management units
(MMU) 1310, one or more processor element arrays 1320, and one or more accumulator units 1330. Processor element array 1320 may comprise an array of processor elements, not shown. Processor elements may comprise, for example, a subtraction and adder units for calculating the SAD between the blocks. MMU 1310 may be used to buffer the data for processor element array 1320. Accumulator unit 1330 may be, for example, an adder unit that adds the outputs from processor element array 1325.
Referring again to Fig. 12, processor 1210 executes one or more sequences of one or more instructions contained in memory 1230. Such instructions may be read into memory 1230 from a computer-readable medium via input/output device 1220. Execution of the sequences of instructions contained in memory 1230 causes processor 1210 to perform the process steps described herein. In an alternative implementation, hard-wired circuitry may be used in place of or in combination with software instructions to implement the invention. Thus implementations of the invention are not limited to any specific combination of hardware circuitry and software.
The term "computer-readable medium" as used herein refers to any media that participates in providing instructions to processor 1210 for execution. Such a medium may take many forms, including but not limited to, non-volatile media, volatile media, and transmission media. Non-volatile media includes, for example, optical or magnetic disks. Volatile media includes dynamic memory, such as memory 1230. Transmission media includes coaxial cables, copper wire, and fiber optics, including the wires that comprise system bus 1260. Transmission media can also take the form of acoustic or light waves, such as those generated during radio-wave and infra-red data communications.
Common forms of computer-readable media include, for example, a floppy disk, a flexible disk, hard disk, magnetic tape, or any other magnetic medium, a CD-ROM, any other optical medium, punch cards, papertape, any other physical medium with patterns of holes, a RAM, PROM, and EPROM, a FLASH-EPROM, any other memory chip or cartridge, a carrier wave as described hereinafter, or any other medium from which a computer can read. Network signals carrying digital data, and possibly program code, to and from system 1205 through system bus 1260 are exemplary forms of carrier waves transporting the information. In accordance with the present invention, program code received by system 1205 may be executed by processor 1210 as it is received, and/or stored in memory 1230, or other non-volatile storage for later execution.
It will be apparent to those skilled in the art that various modifications and variations can be made in the methods and systems consistent with the present invention without departing from the spirit or scope of the invention. The true scope of the invention is defined by the following claims.

Claims

WHAT IS CLAIMED IS:
1. A method for obtaining a motion vector between first and second frames of video image data in a video sequence, wherein each frame is composed of a first field and a second field, the method comprising the steps of: determining a first motion vector describing displacement between the first field of the first frame and the first field of the second frame based on a field search [930]; determining a second motion vector describing displacement between the second field of the first frame and the second field of the second frame based on a field search [935]; and if the difference between the first and second motion vector is less than a threshold [940], determining a third motion vector describing displacement between the first and second frames based on a frame search [945].
2. The method of claim 1 , wherein the threshold is determined based on one or more of the preceding or succeeding frames.
3. The method of claim 2, wherein the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
4. An apparatus for obtaining a motion vector between first and second of frames of video image data in a video sequence, wherein each frame is composed of a first field and a second field, the apparatus comprising: a memory [1230] having program instructions, and a processor [1210] configured to use the program instructions to perform the steps of: determining a first motion vector describing displacement between the first field of the first frame and the first field of the second frame based on a field search; determining a second motion vector describing displacement between the second field of the first frame and the second field of the second frame based on a field search; and if the difference between the first and second motion vector is less than a threshold, determine a third motion vector describing displacement between the first and second frames based on a frame search.
5. The apparatus of claim 4, wherein the threshold is determined based on one or more of the preceding or succeeding frames.
6. The apparatus of claim 5, wherein the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
7. A computer program product comprising: a computer-usable medium having computer-readable code embodied therein for obtaining a motion vector between first and second of frames of video image data in a video sequence, wherein each frame is composed of a first field and a second field, the computer-usable medium comprising: a component configured to determine a first motion vector describing displacement between the first field of the first frame and the first field of the second frame based on a field search; a component configured to determine a second motion vector describing displacement between the second field of the first frame and the second field of the second frame based on a field search; and a component configured to determine a third motion vector describing displacement between the first and second frames based on a frame search, if the difference between the first and second motion vector is less than a threshold, .
8. The computer program product of claim 7, wherein the threshold is determined based on one or more of the preceding or succeeding frames.
9. The computer program product of claim 7, wherein the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
10. A system for obtaining a motion vector between first and secβmd frames of video image data in a video sequence, wherein each frame is composed of a first field and a second field, the system comprising: means for determining a first motion vector describing displacement between the first field of the first frame and the first field of the second frame based on a field search; means for determining a second motion vector describing displacement between the second field of the first frame and the second field of the second frame based on a field search; and means for determining a third motion vector describing displacement between the first and second frames based on a frame search, if the difference between the first and second motion vector is less than a threshold.
11. The system of claim 10, wherein the threshold is determined based on one or more of the preceding or succeeding frames.
12. The system of claim 11 , wherein the threshold is a weighted sum of an average difference between the first and second motion vectors of one or more of the preceding or succeeding frames.
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Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP1383337A2 (en) * 2002-07-18 2004-01-21 Samsung Electronics Co., Ltd. Hierarchical motion vector estimation
CN100409692C (en) * 2005-01-31 2008-08-06 凌阳科技股份有限公司 Motion-vector micro-searching mode determining system and method

Families Citing this family (32)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6697427B1 (en) * 1998-11-03 2004-02-24 Pts Corporation Methods and apparatus for improved motion estimation for video encoding
US6690728B1 (en) 1999-12-28 2004-02-10 Sony Corporation Methods and apparatus for motion estimation in compressed domain
US6671319B1 (en) * 1999-12-28 2003-12-30 Sony Corporation Methods and apparatus for motion estimation using neighboring macroblocks
KR20020011247A (en) * 2000-08-01 2002-02-08 구자홍 Apparatus and method for increasing definition of digital television
US6944226B1 (en) * 2000-10-03 2005-09-13 Matsushita Electric Corporation Of America System and associated method for transcoding discrete cosine transform coded signals
US6668020B2 (en) * 2000-11-04 2003-12-23 Vivotek Inc. Method for motion estimation in video coding
US6628709B2 (en) * 2000-12-21 2003-09-30 Matsushita Electric Corporation Of America Bit number prediction for VLC coded DCT coefficients and its application in DV encoding/transcoding
US20020136302A1 (en) * 2001-03-21 2002-09-26 Naiqian Lu Cascade window searching method and apparatus
US6987866B2 (en) * 2001-06-05 2006-01-17 Micron Technology, Inc. Multi-modal motion estimation for video sequences
CN102316320B (en) 2001-12-17 2014-07-09 微软公司 Skip macroblock coding
US20030202603A1 (en) * 2002-04-12 2003-10-30 William Chen Method and apparatus for fast inverse motion compensation using factorization and integer approximation
US7742525B1 (en) * 2002-07-14 2010-06-22 Apple Inc. Adaptive motion estimation
EP1569460B1 (en) 2002-11-25 2013-05-15 Panasonic Corporation Motion compensation method, image encoding method, and image decoding method
US20040141555A1 (en) * 2003-01-16 2004-07-22 Rault Patrick M. Method of motion vector prediction and system thereof
US7782940B2 (en) * 2003-08-01 2010-08-24 Polycom, Inc. Methods for encoding or decoding in a videoconference system to reduce problems associated with noisy image acquisition
JP4470431B2 (en) * 2003-10-01 2010-06-02 ソニー株式会社 Data processing apparatus and method
KR100597397B1 (en) * 2003-11-06 2006-07-07 삼성전자주식회사 Method For Encording Moving Picture Using Fast Motion Estimation Algorithm, And Apparatus For The Same
US8467447B2 (en) * 2004-05-07 2013-06-18 International Business Machines Corporation Method and apparatus to determine prediction modes to achieve fast video encoding
KR100677118B1 (en) * 2004-06-11 2007-02-02 삼성전자주식회사 Motion estimation method and apparatus thereof
US20050286777A1 (en) * 2004-06-27 2005-12-29 Roger Kumar Encoding and decoding images
US8111752B2 (en) * 2004-06-27 2012-02-07 Apple Inc. Encoding mode pruning during video encoding
US7792188B2 (en) * 2004-06-27 2010-09-07 Apple Inc. Selecting encoding types and predictive modes for encoding video data
FR2872973A1 (en) * 2004-07-06 2006-01-13 Thomson Licensing Sa METHOD OR DEVICE FOR CODING A SEQUENCE OF SOURCE IMAGES
US20070092007A1 (en) * 2005-10-24 2007-04-26 Mediatek Inc. Methods and systems for video data processing employing frame/field region predictions in motion estimation
KR20070055212A (en) * 2005-11-25 2007-05-30 삼성전자주식회사 Frame interpolator, frame interpolation method and motion credibility evaluator
US20080018788A1 (en) * 2006-07-20 2008-01-24 Samsung Electronics Co., Ltd. Methods and systems of deinterlacing using super resolution technology
US8224033B2 (en) * 2008-06-24 2012-07-17 Mediatek Inc. Movement detector and movement detection method
KR20100000671A (en) * 2008-06-25 2010-01-06 삼성전자주식회사 Method for image processing
RU2011110246A (en) * 2008-09-24 2012-09-27 Сони Корпорейшн (JP) DEVICE AND METHOD FOR PROCESSING IMAGES
US8175163B2 (en) * 2009-06-10 2012-05-08 Samsung Electronics Co., Ltd. System and method for motion compensation using a set of candidate motion vectors obtained from digital video
US9066068B2 (en) 2011-10-31 2015-06-23 Avago Technologies General Ip (Singapore) Pte. Ltd. Intra-prediction mode selection while encoding a picture
CN102547296B (en) * 2012-02-27 2015-04-01 开曼群岛威睿电通股份有限公司 Motion estimation accelerating circuit and motion estimation method as well as loop filtering accelerating circuit

Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0573665A1 (en) * 1991-12-27 1993-12-15 Sony Corporation Image data coding method, image data decoding method, image data coding device, image data decoding device, and image recording medium
EP0701378A2 (en) * 1994-08-25 1996-03-13 Sony Corporation Motion vector detection
EP0762776A2 (en) * 1995-08-25 1997-03-12 Thomson Consumer Electronics, Inc. A method and apparatus for compressing video information using motion dependent prediction
US5737023A (en) * 1996-02-05 1998-04-07 International Business Machines Corporation Hierarchical motion estimation for interlaced video

Family Cites Families (26)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4385363A (en) 1978-12-15 1983-05-24 Compression Labs, Inc. Discrete cosine transformer
JP2508439B2 (en) 1987-05-29 1996-06-19 ソニー株式会社 High efficiency encoder
US5341318A (en) 1990-03-14 1994-08-23 C-Cube Microsystems, Inc. System for compression and decompression of video data using discrete cosine transform and coding techniques
US5210605A (en) 1991-06-11 1993-05-11 Trustees Of Princeton University Method and apparatus for determining motion vectors for image sequences
US5640208A (en) 1991-06-27 1997-06-17 Sony Corporation Video signal encoding in accordance with stored parameters
US5539836A (en) 1991-12-20 1996-07-23 Alaris Inc. Method and apparatus for the realization of two-dimensional discrete cosine transform for an 8*8 image fragment
US5430886A (en) 1992-06-15 1995-07-04 Furtek; Frederick C. Method and apparatus for motion estimation
US5710603A (en) 1992-10-07 1998-01-20 Daewoo Electronics Co., Ltd. Method for detecting motion vectors
JP3239522B2 (en) 1992-10-30 2001-12-17 ソニー株式会社 Data loss correction method and circuit
JP3546437B2 (en) 1993-03-31 2004-07-28 ソニー株式会社 Adaptive video signal processing unit
US5943444A (en) * 1993-03-31 1999-08-24 Canon Kabushiki Kaisha Image reproducing apparatus
EP0627855B1 (en) 1993-05-31 2001-11-07 Sony Corporation Digital video signal recording
JP3277418B2 (en) 1993-09-09 2002-04-22 ソニー株式会社 Apparatus and method for detecting motion vector
DE4342305A1 (en) 1993-12-11 1995-06-29 Thomson Brandt Gmbh Method for hierarchical motion estimation in a television signal
US5574661A (en) 1994-07-29 1996-11-12 Compcore Multimedia, Inc. System and method for inverse discrete cosine transform implementation
US5706059A (en) 1994-11-30 1998-01-06 National Semiconductor Corp. Motion estimation using a hierarchical search
US5636152A (en) 1995-04-28 1997-06-03 United Microelectronics Corporation Two-dimensional inverse discrete cosine transform processor
JP2853616B2 (en) 1995-07-07 1999-02-03 日本電気株式会社 Motion detection method
US5719642A (en) 1996-05-07 1998-02-17 National Science Council Of R.O.C. Full-search block matching motion estimation processor
US5721595A (en) 1996-06-19 1998-02-24 United Microelectronics Corporation Motion estimation block matching process and apparatus for video image processing
US6037986A (en) * 1996-07-16 2000-03-14 Divicom Inc. Video preprocessing method and apparatus with selective filtering based on motion detection
EP0921683B1 (en) * 1997-12-02 2010-09-08 Daewoo Electronics Corporation Method and apparatus for encoding mode signals for use in a binary shape coder
EP0921497B1 (en) * 1997-12-02 2004-03-24 Daewoo Electronics Corporation Interlaced binary shape coding apparatus
KR100281462B1 (en) * 1998-03-30 2001-02-01 전주범 Method for encoding motion vector of binary shape signals in interlaced shape coding technique
US6317460B1 (en) * 1998-05-12 2001-11-13 Sarnoff Corporation Motion vector generation by temporal interpolation
US6295089B1 (en) * 1999-03-30 2001-09-25 Sony Corporation Unsampled hd MPEG video and half-pel motion compensation

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0573665A1 (en) * 1991-12-27 1993-12-15 Sony Corporation Image data coding method, image data decoding method, image data coding device, image data decoding device, and image recording medium
EP0701378A2 (en) * 1994-08-25 1996-03-13 Sony Corporation Motion vector detection
EP0762776A2 (en) * 1995-08-25 1997-03-12 Thomson Consumer Electronics, Inc. A method and apparatus for compressing video information using motion dependent prediction
US5737023A (en) * 1996-02-05 1998-04-07 International Business Machines Corporation Hierarchical motion estimation for interlaced video

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
SUGURI K ET AL: "A REAL-TIME MOTION ESTIMATION AND COMPENSATION LSI WITH WIDE-SEARCH RANGE FOR MPEG2 VIDEO ENCODING", IEEE INTERNATIONAL SOLID STATE CIRCUITS CONFERENCE,US,IEEE INC. NEW YORK, 8 February 1996 (1996-02-08), pages 242 - 243,453, XP000577936, ISSN: 0193-6530 *

Cited By (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP1383337A2 (en) * 2002-07-18 2004-01-21 Samsung Electronics Co., Ltd. Hierarchical motion vector estimation
EP1383337A3 (en) * 2002-07-18 2012-08-15 Samsung Electronics Co., Ltd. Hierarchical motion vector estimation
CN100409692C (en) * 2005-01-31 2008-08-06 凌阳科技股份有限公司 Motion-vector micro-searching mode determining system and method

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