CA2091155C - Method and apparatus for reproducing blended colorants on an electronic display - Google Patents

Method and apparatus for reproducing blended colorants on an electronic display Download PDF

Info

Publication number
CA2091155C
CA2091155C CA002091155A CA2091155A CA2091155C CA 2091155 C CA2091155 C CA 2091155C CA 002091155 A CA002091155 A CA 002091155A CA 2091155 A CA2091155 A CA 2091155A CA 2091155 C CA2091155 C CA 2091155C
Authority
CA
Canada
Prior art keywords
values
rgb
matrix
xyz
sample
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Expired - Fee Related
Application number
CA002091155A
Other languages
French (fr)
Other versions
CA2091155A1 (en
Inventor
Louis William Adams Jr.
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Milliken and Co
Original Assignee
Milliken and Co
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Milliken and Co filed Critical Milliken and Co
Priority to CA002444218A priority Critical patent/CA2444218A1/en
Publication of CA2091155A1 publication Critical patent/CA2091155A1/en
Application granted granted Critical
Publication of CA2091155C publication Critical patent/CA2091155C/en
Anticipated expiration legal-status Critical
Expired - Fee Related legal-status Critical Current

Links

Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01JMEASUREMENT OF INTENSITY, VELOCITY, SPECTRAL CONTENT, POLARISATION, PHASE OR PULSE CHARACTERISTICS OF INFRARED, VISIBLE OR ULTRAVIOLET LIGHT; COLORIMETRY; RADIATION PYROMETRY
    • G01J3/00Spectrometry; Spectrophotometry; Monochromators; Measuring colours
    • G01J3/46Measurement of colour; Colour measuring devices, e.g. colorimeters
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01JMEASUREMENT OF INTENSITY, VELOCITY, SPECTRAL CONTENT, POLARISATION, PHASE OR PULSE CHARACTERISTICS OF INFRARED, VISIBLE OR ULTRAVIOLET LIGHT; COLORIMETRY; RADIATION PYROMETRY
    • G01J3/00Spectrometry; Spectrophotometry; Monochromators; Measuring colours
    • G01J3/46Measurement of colour; Colour measuring devices, e.g. colorimeters
    • G01J3/462Computing operations in or between colour spaces; Colour management systems
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01JMEASUREMENT OF INTENSITY, VELOCITY, SPECTRAL CONTENT, POLARISATION, PHASE OR PULSE CHARACTERISTICS OF INFRARED, VISIBLE OR ULTRAVIOLET LIGHT; COLORIMETRY; RADIATION PYROMETRY
    • G01J3/00Spectrometry; Spectrophotometry; Monochromators; Measuring colours
    • G01J3/46Measurement of colour; Colour measuring devices, e.g. colorimeters
    • G01J3/463Colour matching
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01JMEASUREMENT OF INTENSITY, VELOCITY, SPECTRAL CONTENT, POLARISATION, PHASE OR PULSE CHARACTERISTICS OF INFRARED, VISIBLE OR ULTRAVIOLET LIGHT; COLORIMETRY; RADIATION PYROMETRY
    • G01J3/00Spectrometry; Spectrophotometry; Monochromators; Measuring colours
    • G01J3/46Measurement of colour; Colour measuring devices, e.g. colorimeters
    • G01J3/465Measurement of colour; Colour measuring devices, e.g. colorimeters taking into account the colour perception of the eye; using tristimulus detection
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01JMEASUREMENT OF INTENSITY, VELOCITY, SPECTRAL CONTENT, POLARISATION, PHASE OR PULSE CHARACTERISTICS OF INFRARED, VISIBLE OR ULTRAVIOLET LIGHT; COLORIMETRY; RADIATION PYROMETRY
    • G01J3/00Spectrometry; Spectrophotometry; Monochromators; Measuring colours
    • G01J3/46Measurement of colour; Colour measuring devices, e.g. colorimeters
    • G01J2003/466Coded colour; Recognition of predetermined colour; Determining proximity to predetermined colour

Abstract

An apparatus and method for reproducing the color of blended colorants on an electronic display such as a cathode ray tube, liquid crystal display or other type of electronic device that utilizes RGB
values. Predictions of blended colorants on or in substrates can be made from XYZ measurements of samples prepared with no colorants, one colorant, and pairs of colorants. The calculation method uses light absorption, light scattering, and light absorption blend coefficients.
An image digitizer can be used to obtain XYZ values from samples.
Furthermore, image digitizer RGB values are converted into XYZ values with a non-linear model using a simple method. Furthermore, the above process to generate XYZ values from image digitizer RGB values can be used to generate RGB values from XYZ values for electronic display.

Description

'~ f' r1 .' ~ r. r.
~sa ..''181a II ~~ t, 'r METHOD AND APPARATUS FOR REPRODUCING BLENDED
COLORANTS ON AN ELECTRONIC DISPLAY
Backeround of the Invention This invention relates to a method and apparatus for reproducing the color of blended colorants on an electronic display.
The most accurate ways of computing color formulation are either very difficult to use, or computationally impractical. The most successful simple mathematical theory for predicting the color of mixtures is the Kubelka-Munk Model. For some applications, the model is overly simplistic. The Kubelka-Munk Model assumes light falls exactly perpendicular onto a perfectly flat media containing the colorants. The colorants must be perfectly mixed into the substrate media, and the resulting colored substrate must be isotropic. The index of refraction of the media and colorants is assumed to be the same as air, so internal and external specular reflection and refraction are ignored.
Assume these conditions are met, and the substrate is optically thick. In this case, Kubelka-Munk Theory predicts the following simple relationship: K/S ~ (1-R)2/2R. K and S are physical properties of the colored media. R is the measured color. The relationship expressed by 2 0 the equation holds at each wavelength of light in the visible spectral band. R denotes the fraction of light reflected by the sample. K and S
are light absorption and light scattering coefficients of the colorant mixture, respectively. It is more convenient to deal with K/S rather than R. This is because the physical properties of a mixture (K and S) are, to a good approximation, proportional to the physical properties of each colorant in the mixture, namely the corresponding coefficients Ki and Si of colorant i. The proportionality constants are component concentrations C1. Therefore, for simple colorant formulation calculations, one assumes for N colorants that K = K1C1+KZCZ+ ... KNCN
and S m S1C1+SZCZ+ ... SNCN. As before, these equations hold at each c, ~; ;: ~.v a wavelength of light. By inverting the earlier formula (K/S - (1-R)Z/2R) that connects K/S to R, and by using the above equations connecting K
and S to Ki and Si, a connection is obtained between colorant concentrations Ci and measured color R. Values of absorption and scattering coefficients of colorants are typically extracted from least squares calculations involving sample color measurements.
For applications requiring a high degree of accuracy, this simple Kubelka-Munk Theory must be modified. Corrections for substrate surface reflection, internal refraction, and colorant interactions are necessary. Sometimes it is necessary to extend spectral measurements into the ultraviolet to deal with colorant fluorescence. The texture of some targets (e. g., textiles) have a gloss that cannot be easily subtracted by measurement or compensated for by mathematical modeling.
This means computed values for Ki and Si must be cautiously interpreted, and perhaps further modified, before subsequent colorant formulation predictions are accurate.
In computer aided design (CAD), visual feedback is desirable during color formulation. One way to do this is to simulate a product on an electronic display. Performing Kubelka-Munk calculations, with 2 0 the corrections noted above, involves a great deal of computation.
Spectral data at many wavelengths must be stored on computer. Color measurements are traditionally made with spectrophotometers. These devices are relatively expensive and require uncommon technical expertise to operate. The usual way of converting spectral data into color coordinates appropriate for electronic display involves complex nonlinear equations. Computer aided design is one example of an application where color precision requirements are less demanding than, say, textile dye formulation. The present invention solves these problems, in a manner not disclosed in the known prior art, for less 3 0 demanding applications.

r n a ~ r-r~
2~a ~_..::~~
wary of the Invention This Application discloses an apparatus and method far reproducing blended coloration of samples on an electronic display. The electronic display can be a cathode ray tube, liquid crystal display, or other type of electronic display utilizing red, green, and blue (RGB) color coordinates. We usually assume colorants are blended and not merely placed on the substrate in side-by-side relation. Colorants can be applied in layers, if the colorants are mostly transparent, not very opaque. Color image digitizers are commonly used during some kinds of computer aided design. We show how color image digitizers, less expensive than traditional color measurement equipment, can be used to obtain color measurements. This invention is for simulation work only and cannot be used for critical colorant formulation work.
We choose CIE XYZ tristimulus color coordinates for color ~.5 analysis. Instead of measurements over many different wavelengths, tristimulus color measurements X, Y, and Z, are averages over red, green, and blue spectral bands, respectively. This is the minimum spectral information required to quantify color, since color vision provides the brain with red, green and blue spectral band averages via 2 0 retina cone cells. And, this is why electronic displays use three-color light emission systems; e.g., CRT color monitors use red, green, and blue phosphors. Devices that measure color at many wavelengths (such as spectrophotometers and radiometers) compute XYZ values from appropriate weighted averages in the red, green, and blue spectral bands. Devices 2 5 such as colorimeters, color luminance meters, and desktop image digitizers are less expensive because XYZ values are directly measured using three color optical filters. Each filter performs the appropriate spectral band averages directly. That is, color is measured essentially at only three or four wavelengths for these latter devices.

,.. ,.
U e/ (. .:., rl ~J
Whenever possible, a color image digitizer is preferable to a colorimeter because it is less expensive and requires less technical expertise to operate. Color image digitizer operation can be more easily incorporated into an application than devices like spectrophotometers. A color image digitizer is also more likely to be considered necessary for other activities, such as image acquisition.
Color image digitizers are less accurate than full spectrum measurement devices, but we are only considering applications where high accuracy is unnecessary. For example, visual feedback for CRT color monitor imagery requires less accuracy than, say, product color quality control in a manufacturing operation. Human color vision is very accommodating to systematic deviations from color accuracy.
The use of XYZ values violates Kubelka-Munk Model assumptions because the derivation treats radiation scattering at each wavelength.
Weighted averages of wavelengths have no physical meaning in the model.
Using XYZ values in the Kubelka-Munk Model leads to incorrect predictions for colorant mixtures. It is necessary to add additional terms to the model to achieve satisfactory predictions. The previously stated equations for K and S contain terms of the form K;C; and S;C;. We discovered that it is sufficient to add terms of the form Ki~CiC~ to the equation for K. We refer to the coefficients K;~ as light absorption blend coefficients for colorants i and j. It is not necessary to add similar terms to S. These new coefficients are generally not related to molecular interactions between colorants in the mixing media, although the addition of these terms might better accommodate such interactions when present. In this invention, least squares fitting to our modified Kubelka-Munk equations partially compensates for factors such as specular reflection, non-smooth surfaces (e.g., textiles), the use of tristimulus color measurements, and other factors not included in simple 3 0 Kubelka-Munk Theory.
,i ~~t ~,~~.
E; ~ .i. :. :~ .1 If colorants are applied in thin layers on a substrate, rather than well mixed into a substrate, our technique can also successfully predict colors. If colorants are mostly transparent, and not very opaque, then one can use the term Ki~CiC3 in calculations when colorant j is applied to colorant i, and use the term K~iCiC~ when colorant i is applied to colorant j. Kid and K~1 will differ in value to a degree that correlates with colorant opacity. Clearly, a light colorant applied to a dark colorant will appear lighter than a dark colorant applied to a light colorant, in general. For the remainder of this Application, we assume this distinction is not necessary to simplify the Application.
When colorants well mixed, then Ki3 equals K~;, whether or not colorants are opaque.
The first step necessary to compute absorption and scattering coefficients is to gather sample measurements. We measure X, Y, Z
tristimulus color measurements from an uncolored substrate. (All of the samples discussed below must be prepared using the same type of substrate. In applications where substrates are different, each substrate must be treated as a separate case). Then X, Y, Z tristimulus color measurements are made ~rom samples with different concentrations 2 0 of one colorant. This is done for all colorants to be blended, and concentrations must span the practical limit of concentrations.
Finally, X, Y, Z tristimulus color measurements are made from samples utilizing pairs of colorants at several concentrations so that the sum of the blend concentrations is some fixed limit, stated in relative 2 5 terms as 1008. All concentrations in this Application are expressed as a percentage. This relative scale must be based on some absolute physical measurement, such as colorant weight or volume.
The total concentration limit is usually due to some physical constraint on the colorant application process. For example, the amount 30II of a colorant that can diffuse into a textile polymer has an upper ~,," ~ , ~ ~, J
~J r; '. _ '_~ './
limit. Small extrapolations beyond 1008 are predicted satisfactorily in instances where the practical limit chosen for manufacturing purposes is less than the actual physical limit.
Now we begin to utilize the measurements obtained in the first step. The second step is to compute the light absorption coefficient Ko for the uncolored substrate using measurements from the uncolored substrate. The third step is to utilize the measurements from the substrate colored by a single colorant to compute the light absorption coefficients Ki and light scattering coefficients Si for colorant i.
The final step utilizes the two-colorant blend measurements to compute the light absorption blend coefficient Ki3 for each pair of colorants i and j. All of these coefficients are computed for the X, Y, and Z (red, green, and blue) spectral bands. We have discovered that it is not necessary to extend the model to higher order terms. There is no So term for the colorant substrate, because in our procedure this substrate light scattering term is factored into the other coefficients.
ICa, Ki, Si, and Kid represent caded summaries of all the sample measurements. Less computer resources are necessary to store these coefficients than is necessary to store the measurements used to obtain 2 0 the coefficients. These stored coefficients comprise a compact database for color prediction. Least squares fitting eliminates sample measurement variability from future calculations. This means using the coefficients to compute a color gradient always produces a visually uniform color series. These are important advantages over interpolation 2 5 schemes based on many color measurements, when such a method is unwarranted.
Once the coefficients are used to compute K/S values for arbitrary blends, which in turn is converted into color as XYZ values, these XYZ
values can be used to compute RGB color coordinates used to show the 3 O~I blends on an electronic display.
Wi _~ I ~ ) :.J
It is an advantage of this invention to predict the color of a blend of colorants on substrates without having to actually manufacture a sample with this blend of colorants.
Still another advantage of this invention is that an image digitizer can be used to convert data into standard XYZ color measurements.
Another advantage of this invention is that predicting the blend of more than two colorants does not require the manufacturing of samples with more than two colorants.
loll A further advantage of this invention is that specular reflection, nonsmooth surfaces (e. g., textiles), layers of mostly transparent colorants (e. g., computer hardcopy colorants), and tristimulus color measurements can be accommodated, even though these conditions are not appropriate in the traditional Kubelka-Munk model.
1511 Yet another advantage is a unique method of converting X, Y, Z
values into R, G, B values and visa versa without having to linearize their nonlinear relationship. This advantage applies to RGB values for CRT color display, and RGB values obtained from an image digitizer.
These and other advantages will be in part apparent and in part 2 0 pointed out below.
Brief Description of the Drawings The above as well as other objects of the invention will become more apparent from the following detailed description of the preferred embodiments of the invention when taken together with the accompanying 25 drawings, in which:
FIG. 1 is a schematic block diagram of the basic elements for reproducing blended coloration of a substrate on an electronic display;
FIG. 2 is a flowchart of the steps utilized in measuring color of a sample by means of an image digitizer;
~'~ n ~ .r ~iia ~...:)~t FIG. 3 is a graph of Macbeths Colorchecker~ Color Rendition Chart color chromaticities comprised of six shades of gray, three additive primaries (red, green, blue), three subtractive primaries (yellow, magenta, cyan), two skin colors, and ten miscellaneous colors which collectively span most of color space, and the graph shows the gamut of chromaticities available on a CRT color monitor;
FIG. 4 is a graph of image digitizer RGB values with measured and predicted XYZ values, and image digitizer model parameters, for Macbeth~
gray shades;
1 FIG. 5 is a graph of measurements versus predictions for all Macbeth~ colors;
FIG. 6 is a flowchart of the steps utilized to predict colorant blends on a substrate;
FIG. 7 is a chart showing the series of four calculations 15 necessary to compute Ko, K1, Si, and Kid coefficients for colorants that are dyes;
FIG. 8 is a flowchart of the steps utilized in displaying color measurements on a cathode ray tube or other RGB electronic image display;
20 FIG. 9 is a graph of cathode ray tube (CRT) RGB values with measured and predicted XYZ values, and CRT model parameters; and FIG. 10 is a graph of cathode ray tube measurements versus predictions for all measured phosphor colors.
Detailed Description of the Preferred Embodiment 25 Refer now to the accompanying flowcharts and graphs. FIG. 1 shows a schematic diagram of the basic elements for reproducing blended coloration on an electronic display using computer technology. Boxes in the diagram either represent computer information modules (algorithms, databases) or external measurement devices (colorimeters, dn~.~
~J t~' ~.l :~~ .L :F
spectrophotometers). Labeled arrows represent the flow of specified information between computer modules or external measurement devices.
One color measurement standard for computer aided design or manufacturing systems is the CIE XYZ tristimulus color coordinates. It is used for both color input (image digitizers, on-line colorimeters, colorant formulation databases), and color output (color monitors, color printers, colorant formulation databases). This standardized color coordinate system has been an international standard for seventy years.
The use of XYZ values is increasingly being used as the basis for computerized processes involving color. Even companies with proprietary color coordinate systems that offer advantages for specific applications can usually convert their color coordinates into XYZ color coordinates.
One reason for preferring XYZ values over other standard color coordinates is that they directly correspond to RGB color systems used by devices such as image digitizers and electronic displays.
XYZ values measured with a colorimeter are dimensionless, and are usually expressed as a percentage. The percent sign is customarily omitted. XYZ measurements are made with respect to some illuminant standard, such as D65 (day light at a black body temperature of 65,000°K). These relative color values are used to quantify the color of objects that do not emit light. Percentages indicate the fraction of white light that is reflected from a target in the red, green, and blue spectral bands. Some objects emit light, such as the phosphors of a CRT
color monitor. Then absolute XYZ values are measured in dimensions such 25,1 as candelas per square meter or foot-Lamberts. Absolute XYZ values can Ii be converted into relative XYZ values by scaling them with respect to some standard emitter of white light.
It is common for measurements to be expressed in terms of chromaticity x and y, and "luminance" Y. Conversion between XYZ values 30II to xyY values is given by x = X/(X+Y+Z), and y = Y/(X+Y+Z). Y is the C1 n r~ n , ..
~, ~~ 1: <: . ,; ~J
same in both coordinate systems. Chromaticity coordinates x and y are dimensionless and express the relative proportion of red and green in a color. The relative amount of blue is z - 1-x-y. A color with equal amounts of red and green have x - y - z - 1/3. Y is sometimes chosen as a measure of luminance (intensity, brightness) because human vision is more sensitive to green than red or blue. Chromaticities of common colors are shown in FIG. 3. Also shown is the chromaticity range of a typical CRT color monitor used for computer aided design.
Although color measurements are traditionally obtained from colorimeters 2 or spectrophotometers 3, or chroma meters (not shown) the preferred method in this Invention involves the use of an image digitizer 1, as shown in FIG. 1. Image digitizers like those manufactured by Sharp Electronics Corporation located at Mahwah, New Jersey, also have red, green, and blue receptors, or flash red, green, and blue light on samples. However, current image digitizers typically do not return XYZ values, or any other standard color coordinate system.
Such devices commonly return a set of RGB values, indicating the strength of red, green, and blue. Red, green, and blue image digitizer color components are denoted as R, G, and B respectively. RGB values 2 0 commonly range from 0 through 255. This Application discloses how to convert from scanner RGB values to relative XYZ values.
The image digitizer, 1 in FIG. 1, scans a sample and provides image digitizer RGB values for each measurement area in the sample.
Computations upon this RGB data is performed by the Image Digitizer Model Algorithm 5. Before RGB values can be converted into XYZ values in 5, certain prerequisite measurements and calculations must be performed. In phase one of the prerequisite work, target shades of gray having identical chromaticity xy are scanned by the image digitizer.
These measurements are used to compute model parameters that are characteristic of the red, green, and blue image digitizer light CJ a . ~ ~ ~. ~' measurement channels. In phase two, all of the target colors are used to compute a mixing matrix. The mixing matrix is used to convert all image digitizer RGB values into XYZ values.
A color target must be chosen for the image digitizer, to be used as described in the previous paragraph. The target must have several shades of gray with identical chromaticities. It must also have several colors that span the major color chromaticities. Very elaborate color targets are under development for color critical industries. One such color target standard is offered by the American National Standards Institute (ANSI) IT8 committee for graphic arts. Both transparent (ANSI
IT8.7-1) and reflectance (ANSI IT8.7-2) targets will be offered by the major photographic film manufacturers by mid-1992. For our purposes, it is sufficient to use Macbeth~ ColorChecker~ Color Rendition Chart.
The Macbeth~ ColorChecker~ Color Rendition Chart has been a reliable color standard for photographic and video work for the last 15 years. The Macbeth~ chart has 24 colors, as shown in TABLE 1, with chromaticity coordinates based on CIE illuminant C. Colors include six shades of gray, three additive primaries (red, green, blue), three subtractive primaries (yellow, magenta, cyan), two skin colors, and ten 2 0 miscellaneous colors. Chromaticities of chart colors span most of color space, as shown in FIG. 3. FIG. 3 also shows the gamut of chromaticities available on a typical CRT color monitor.
CIE color measurements are provided by Macbeth~ for each color in the Macbeth~ chart, and reproduced in TABLE 1. Alternatively, a 2 5 colorimeter of choice can be used to measure the Macbeth~ colors. While using the measurements supplied by Macbeth~ for calculations is convenient, this is not the preferred method. A standard colorimeter should be chosen for all measurements made for a computer aided design process. For example, if a HunterLab~ LabScan, manufactured by Hunter 3 OI Lab of Reston, Virginia, is used to measure all product samples, then it n ~ .~ a r) .J
V .., _ .
is preferable to measure the Macbeth~ chart colors With the HunterLab~
LabScan. Then the correspondence between future sample measurements and image digitizer measurements would be as close as possible. This is because different models of colorimeters, even when manufactured by the same company, often give different CIE color measurements. For example, colorimeters treat specular reflection differently. Colorimeters use different sample illumination geometries. This step of collecting RGB
and XYZ values of target colors is designated as numeral 20 in FIG. 2.
In this document, RGB and XYZ values are normalized so values fall between 0 and 1. This step is denoted in FIG. 2 by numeral 30.
Tristimulus values for red, green, and blue image digitizer channels are denoted X=, Y8, and Zb, respectively, and we refer to them generically as XrYBZb values. They are defined only for gray shades having the same neutral chromaticity. They are computed from the gray shade light measurements, and are used in subsequent calculations to characterize the performance of the image digitizer light sensors. Gray shades can be provided by the Macbeth~ ColorChecker~. These shades of gray all have chromaticity x - 0.310 and y - 0.316, and are colors 19 through 24 shown in TABLE 1.
2 0 Image digitizer parameters characterizing the non-linearity between image digitizer RGB values and XYZ values are denoted as g=, g$, and gb, respectively. These are generically referred to as "gamma" or g.
Image digitizer parameters characterizing red, green and blue channel contrast are denoted as G=, Gg, and Gb, respectively. These are generically referred to as "gain" or G.
Image digitizer parameters characterizing red, green and blue channel brightness are denoted as Or, Og, and Ob, respectively. These are generically referred to as "offset" or 0.

~, n ., .r ... ..
2 , ; . ..
~t ~. .:. _t ~: -s Our choice of notation, and the terms "gamma", "gain", and "offset" derive from their original use for mathematically modeling cathode ray tube display devices.
Gain, offset and gamma parameters in the image digitizer model establish a quantitative relationship between measured color (XYZ
tristimulus values) and image digitizer color components (RGB values) for the red, green, and blue image digitizer channels, as shown in the following equations:
Xr - (Gr + Or*R)6= Eq. 1.0 Y8 - (G8 + Og*G)8g Eq. 1.1 Zb - (Gb + Ob*B)gb Eq. 1.2 We now explain how to compute the image digitizer model parameters from the Macbeth~ ColorChecker~ color measurements. XYZ measurements values are selected for shades of gray having the same chromaticity, xy.
Colors 19 through 24 (TABLE 1) are shades of gray with identical chromaticities. These are identified as the XrYBZb values. Each gray shade has corresponding image digitizer RGB values. This step is designated as numeral 40 in FIG. 2. The next step is designated as numeral 50 in FIG. 2, which is to chose whether to treat the X, Y, or Z
2 011 data. Usually, one proceeds in the order X component, then Y component, and then Z component. The order is unimportant. TABLE 2 shows an example of image digitizer RGB values for Macbeth~ colors. Equations 1.0, 1.1 and 1.2 are in the following form (x and y are not chromaticity variables here):
25~~ y = (G + 0*x)g Eq. 2.0 ., ~ v. ,, . :~
Equation 2.0 can be rewritten as an equation that is linear in yl~s. That is, a graph of x as a function of y1~6 is a straight line.
yl~a - G + 0*x Eq. 2.1 For specific values of g, G, and 0, we define a least squares error E. A subscript m denotes individual gray shade measurements xm (representing Rm or Gm or B,n) , and yml~6 (representing X~liBr or Y~i~g6 or Z~l~sb). There is a total of N gray shade measurements, so m ranges from 1 to N.

EZ=~ (Y g-G'W*X~,) Z Eg. 2 . 2 m~1 For computational purposes, an expanded form of Equation 2.2 is preferred. Equation 2.3 is expressed in terms of summations that will already exist in prior computational steps in the final algorithm.
E2 - Syy - 2GSy - 20S,~y + OZS,a + 2GOS= + GZS Eq . 2 . 3 The following summation equations determine the "S" variable values.
N
S = ~ (1) Eq. 2.4 m-1 N
Sx = ~ (Xm) Eq. 2 . 5 m-1 N
S~ _ ~ (X,rt) Eq. 2.6 m~1 n n .~ ~1_ r ~, U e.~ .1. r_>" Y

SY = ~, (Ymg ) Eq. 2 . 7 m-~

Syy = ~, .(Ymg ) Eq. 2 . 8 m-~

Sxy = ~ (Xm Ym9 ) Eq. 2 . 9 m-~
Note the variable S found in Equation 2.4, is equal to the number of shades of gray.
Equation 2.1 is nonlinear in g. Because of this nonlinearity, our approach is not to minimize the least squares error found in Equation 2.3 for g, G, and 0 simultaneously. Instead, we pick a reasonable value for g, and find G and 0 that minimize the least squares error. The step of choosing g is designated by numeral 60 in FIG. 2. For this g, G and 0 are computed from by Equations 3.0, 3.1 and 3.2. This is designated by numeral 70 in FIG. 2. These equations are solutions to the least squares fit for a given value of g.
D - S,aS - Sx2 Eq . 3 . 0 G - (S,QSy - SxSxy)/D Eq. 3.1 0 - (-SxSy + S Sxy)/D Eq. 3.2 Our chosen g and the computed optimal values for G and 0 can be put into Equation 2.3 to compute the least squares error E (or EZ) as designated by numeral 80 in FIG. 2. We then can pick another value of g, which allows us to compute another set of optimal values of G and 0, that in turn gives a new least squares error. This decision to select another g is designated by numeral 90 in FIG. 2. For two choices of g, 2 0 the better value is the one giving the smaller least squares error E (or ~ r. ~, , ~ ~. .., ". . .l EZ). The least squares error is not very sensitive to changes in g by differences of 0.25. The algorithm chooses values of g from 1 through 5 in increments of 0.25 As outlined above, for each g, compute G and 0 from Equations 2.4 through 2.9, and 3.0 through 3.2, and least squares error EZ from Equation 2.3 The best value of g is the one minimizing EZ. This final selection of g is designated by numeral 100 in FIG. 2.
As previously stated with regard to numeral 50 of the flowchart in FIG. 2, this calculation is repeated separately for the red, green, and blue components of the gray shades. This decision step is designated by numeral 110 in FIG. 2, which will lead to repeating steps 60, 70, 80, 90 and 100 in FIG. 2 for each spectral band.
Once gamma, gain, and offset parameters are computed, Equations 1.0, 1.1, and 1.2 predict Xr, Ya, and Zb for gray shades with chromaticities matching the original gray shades. For the Macbeth~
chart, Equations 1.0, 1.1 and 1.2 then accurately predict all shades of gray with a chromaticity equal to x = 0.310, y = 0.316. Equations 1.0, 1.1 and 1.2 do not by themselves accurately predict arbitrary colors.
The next step is to use measurements of arbitrary colors so we can convert image digitizer RGB values of arbitrary colors into XYZ values 2 0 (or vice versa). One of Grassman's Iaws provides an approximate way to calculate tristimulus values for arbitrary colors. It is applicable because image digitizer channels are largely independent (i.e., the channels measure primary colors). Therefore, additive color mixing is appropriate. A mixing matrix M produces a linear combination of the gray shade tristimulus values. Define the column matrix of measured XYZ
values for any color as:

~l ~~ r1 tr ri ;. ., c~
X
X = Y Eq. 4.0 Z
and the column matrix of predicted XYZ values computed from Equations 1.0, 1.1 and 1.2, as:
Xr(R) Xrgb -- Yg (G) Eq. 4 .1 Zb(B) Then X and Xrgb are connected by the linear relationship X - MXrgb Eq . 4 . 2 where M is a 3x3 matrix. M is computed from all target colors, including shades of gray, in a least squares (pseudo-inverse) fashion, as follows. Define a 3xN matrix Q whose columns are N color target measurements Xm of the type shown in Equation 4.0 as follows:
Q = ~ Xl XZ X3 . . . XN ~ Eq. 4 . 3 Also define a 3xN matrix Q=~, containing the corresponding image digitizer channel tristimulus predictions obtained from Equations 1.0, 1.1 and 1.2 for the same N measurements as follows:
Qzgb I Xzgb1 Xrgb2 Xzgb3 ~ . . XzgbN ~ Eq. 4 . 4 The computation of Q and QrBb from XYZ measurements and estimates of all target colors is designated as numeral 120 in FIG. 2. The columns of Q and Qrgb are connected by matrix M from Equation 4.2, so therefore:

r~ 1 a .,. .., V c.~ .1... ~, ~.7 Q - MQr~ Eq. 4.5 This holds true if the image digitizer model (Equations 1.0, 1.1 and I.2) is exactly true and color measurements are without error. The model and data are not exact, so the "best" (least squares) solution is obtained by solving Equation 4.5 using a pseudo-inverse as follows:
M - Q(QrabQrabT) 1 Eq. 4.6 Superscript T denotes matrix transpose, and superscript -1 denotes matrix inverse. The computation of M is designated by numeral 130 in FIG. 2. The inverse is computed for a 3x3 matrix. Once the gain, offset, gamma, and mixing matrix M are known, Equations 1.0, 1.1, 1.2 and 4.2 are used to convert image digitizer R, G, and B into X, Y, and Z
for any color. This step is designated by numeral 140 in FIG. 2. This conversion constitutes the image digitizer model algorithm denoted by numeral 5 in FIG. 1. In an application, such a conversion might be used to obtain XYZ values for the color database denoted by numeral 7 in FIG. 1.
The inverse transformation, converting X, Y, and Z into R, G, and B, is computed as follows:
Xrab- M-1X Eq .
5 .

20R (Xrl~ar - Eq. 5.1 - Gr)/Or G (yal~sa _ Eq, 5.2 - Ga)/pa B (Zbi/ab _ Eq. 5.3 - Gb)/pb Once gamma, gain, and offset are computed for a device, they can be saved in a computer data structure for all future color conversions.
25II That is, only the step labeled 14C) in FIG. 2 is necessary for subsequent ~,n 1 color conversions. These image digitizer parameters are independent of the types of target measured by the image digitizer. XYZ values for textiles, paper products, photographs, and so on, can be computed from RGB values using the same parameter values.
TABLE 2 shows an example of image digitizer RGB values, and TABLE 3 and TABLE 4 show the corresponding computed image digitizer model parameters. More specifically, TABLE 3 shows gamma, gain and offset values for the R, G, and B image digitizer channels, and TABLE 4 shows the 3x3 mixing matrix M. Data was obtained from a Sharp~ JX-450 image digitizer. FIG. 4 shows a graph of measured and predicted XYZ
tristimulus values for Macbeth~ gray shades, plotted against image digitizer RGB values. Predictions were computed from least squares values of gamma, gain, and offset values. FIG. 5 shows image digitizer XYZ measurements versus XYZ predictions for all Macbeth~ colors.
Predictions were computed from least squares values of gamma, gain, offset, and the mixing matrix M.
A second aspect of this invention, of primary importance, is the ability to predict the color of colorants blended into an optically thick substrate. If colorants are mostly transparent, not very opaque, 2 0 then they can be applied in layers and this invention still applies. An illustrative non-limiting example of this latter case is the spraying of textile dyes onto a carpet substrate. Layered colorants sometimes produce colors that depend on the order of colorant application, but this effect can be accommodated by this invention, and is described 2 5 later in this Application.
In Kubelka-Munk Theory, the symbol R represents the fraction of light reflected by a sample at a specific wavelength of light. In this Application, R generically denotes scaled versions of one of the tristimulus values, X, Y, or Z. As previously discussed, the 3 0 tristimulus coordinates X, Y, or Z represent averages over the red, ~ n ~ ~ ~ ~, ,., ~t~._. . _~a green, and blue spectral bands, respectively. Therefore, our use of XYZ
values for R differs from Kubelka-Munk Theory. The chosen scaling of XY2 values must produce R values that are less than 1.
The ratio of light absorption and light scattering coefficients of a colorant mixture is denoted by K/S. K/S is dimensionless, and has three components that correspond to the red, green, and blue spectral bands. K/S is related to R (the scaled XYZ values) by Equation 6Ø
Equation 6.0 comes from Kubelka-Munk Theory for an optically thick substrate. Equation 6.1 is the mathematical inverse of Equation 6Ø
Equation 6.0 is used for computing K/S when R is known by measurement.
Equation 6.1 is used for predicting R when K/S is known.
K/S = (1-R)2/2R Eq. 6.0 R - (1+K/S) - [(1+K/S)Z - lJl~z Eq. 6.1 Equation 7.0 shows how absorption and scattering coefficients of individual colorants are combined in a mixture to produce K/S in this Application. The numerator of Equation 7.0 is a sum of light absorption terms for each colorant in the mixture. The denominator is a sum of light scattering terms for each colorant. N is the number of colorants.

_ x~+~ x=c=+~, ~ x~jc~c~
_K _ i=~ ~_~ ~_~ Eq. 7 . 0 N
1 +~ Si c~
a-1 1~ is the light absorption coefficient for a substrate without 2 0 colorants. The zero subscript denotes zero colorant concentration.
Equation 8.0 below establishes the connection between Rp and ICo. The reflectance of uncolored substrate is denoted by Rfl. This relationship I comes from Equation 7.0 when relative colorant concentrations C; and C~

n n t- y ~.;
t3 a: r a are set to zero. This notation differs somewhat from standard colorimetric notation in that the substrate light scattering coefficient Sa does not appear in Equation 7.0 The substrate light scattering coefficient is factored into the other coefficients in this Application, and explains why the dimensionless term "1" arises in the denominator of Equation 7.0 All light absorption and scattering coefficients in this document are dimensionless because of this normalization.
The light absorption and light scattering coefficients Ki and Si , correspond to similar terms in the Kubelka-Munk Model. The light absorption blend coefficients for colorants i and j are denoted as Ki3.
We add these latter coefficients to the Kubelka-Munk Model in This Invention to compensate for the fact that XYZ values are used in place of spectral reflectivities at specific wavelengths. These coefficients are generally not related to molecular interactions between colorants in the mixing media, although the coefficients might compensate for such interactions when they exist. If colorants are applied in layers, then the ordering of the subscripts is important. For example, if colorant i is first applied to the substrate, followed by colorant j, we use Kid.
If colorant j is applied first, we use K31. Ki~ and K~i are not 2 0 generally equal.
Equation 7.1 comes from rearranging Equation 7.0 It is linear with respect to colorant concentrations 01, and constitutes the basis for the linear least squares fit calculations. Note K/S appears on both sides of the equation. During the fit process, K/S is computed from Equation 6.0 In all calculations, concentrations are expressed as fractions, not percentages.
X X H
S = Ko+~ [ (Ki-Si S ) Ci) +~ ~ (ICIjCjCj) Bq. 7 .1 We now review the way that sample measurements are used to compute the light absorption, scattering, and absorption blending coefficients.

~ .~~ .1 ,1 r, ..
c The first step is to measure X, Y, Z values for uncolored substrate, denoted by numeral 170 in FIG. 6. See Step 1 in FIG. 7. When colorant is absent from the substrate, all colorant concentrations are zero, and we compute I~ from Equation 8.0 Ro represents scaled XYZ measurements of the substrate.
(K/S)c ~ Ko ' (1-~)2/2Ro Eq. 8.0 When all colorants in a mixture are at very small concentrations, this constraint guarantees the predicted color of the substrate approaches the color of uncolored substrate. This calculation is labeled 200 in FIG. 6. See STEP 2 in FIG. 7. Once calculated, I~ is used to compute the color of the substrate when colorant concentrations are exactly zero.
The second step in this process is to obtain color measurements from samples made when one colorant is present at several concentrations. This is labeled 180 in FIG. 6. Because only one colorant is used, all of the Ki~CiC~ terms in Equations 7.0 and 7.1 are zero. Let K1 and S1 denote the light absorption and scattering coefficients for colorant 1 at concentration C1. K/S is calculated using Equations 6.0, and KD is already known. We compute K1 and S1 using a least squares fit as shown in Equations 9.0 through 9.5 y - K/S - Ko Eq. 9.0 xi - Ci Eq. 9.1 x2 - (K/S)Ci Eq. 9.2 w ~ ~R/(Ro-R)Z~2 Eq. 9.3 c,n ~ , , .,..
J ~: y ,. .. . '.7 P P P P
-~ ( w~tzv) ~ ( wixlvyv) + ~ ( waxlaxzv) ~ ( wvxavYv) a ~m v~i v-i a-1 Eq. 9.4 P P P
- ~ ( H'a~ia) ~ ( wa~zv) + ~ ( ~''W axav) a , P1 q~1 P1 P P P P
-~ (waxlaxav) ~. (waxlal'v) + ~ (waxiv) ~ (wvX2vYv) Sl a v~i v~i v-i a-i gq. 9.5 P P P
- ~ ( w~tiv) ~ ( w~c=v) + ~ ( w,~claxav) s q~1 q~1 PI
Variable y denotes the dependent variable, and x1 and x2 denote independent variables. Variable w is a least squares weight forcing relative errors to be uniform for XYZ predictions. Index q refers to different colorant concentrations, and P designates the total number of different colorant concentrations (the total number of samples). This calculation is labeled 210 in FIG. 6. See STEP 3 in FIG. 7. Once calculated, K1 and S1 are used to predict color produced by different concentrations of colorant 1.
The third step of this process is to obtain color measurements of samples made with two colorants present at different concentrations.
Let two colorants be labeled by subscripts 1 and 2. Both colorant concentrations, C1 are C2, must be non-zero in the data set used for the least squares fit. Total concentration, C1+CZ, must not exceed 1008.
It is best for these concentrations to span as wide a range as possible, and convenient (although not necessary) to choose C1+CZ=1008. I~, K1, S1, KZ, and SZ must already be known for colorants 1 and 2. As usual, K/S is calculated using Equation 6Ø KlZ is to be determined. The step of measuring X, Y, Z values for substrates having pairs of colorants applied at several concentrations is denoted by numeral 190 in 2011 FIG. 6.
y = (1+S1C1+SzCz) (K/S) - (1Cp+K1C1+KZCZ) Eq. 10.0 x = CaCZ Eq. 10.1 ~fJj,.s, ;J
w - [R/(Ro-R)z]z Eq. 10.2 P
w~~Q) Eq. 10.3 ( wQxQ ) m Index q refers to different colorant concentrations, and P designates the total number of pairs of blends (the total number of samples). This calculation is labeled 220 in FIG. S. See STEP 4 in FIG. 7. Once calculated, Klz (along with Ko, K1, S1, Kz, and Sz) is used to predict color produced by different blends of colorants 1 and 2.
The same procedure is used to determine parameters for other colorants. Once obtained, 1~, Ki, Si, and Kid can be used to compute XYZ
values for any colorant blend by utilizing equations 7.0 and 6.1 This is the final step designated as 230 in FIG. 6.
The color of one colorant on a given substrate is defined by nine numbers: Kd, K1, S1. Two colorants on a given substrate have color defined by eighteen numbers: Ko, K1, S1, Kz, Sz, Klz. (We exclude the case where Kzl is necessary as discussed earlier in this Application.) The color of three colorants on a given substrate is defined by thirty numbers: Ko, K1, S1, Kz, Sz, K3, S3, Kiz, K13, Kz3. These coefficients summarize all sample measurements, and would normally be saved in a computer database for subsequent blend calculations; e.g., 7 in FIG. 1.
2 0 One application for this type of colorant blending analysis is the application of dyes to a carpet substrate using computer controlled dye jet technology. This is not to be construed as limiting in any way, since any optically thick substrate can be utilized with this process.
Measurements must be made after the carpet is in final product form;

,. .~ ~ , .,...
l1 c;
e.g., after the carpet dye (if any) is fixed, after shearing, after topical treatments are applied, and so on. This requirement includes measurements made of undyed samples used to compute Ko for the carpet substrate. If a colorimeter is used instead of an image digitizer, it is preferable to limit measurements to one colorimeter. If the colorimeter provides CIE L"a"b" measurements, these color coordinates must be converted into XYZ tristimulus values using the appropriate colorimetric equations. The colorimeter must be calibrated using the largest possible aperture, preferably at least 2" in diameter. Glass is not used on the colorimeter aperture because crushing the carpet pile against glass adds a gloss that is not observed on carpet during normal use. Carpet pile on samples is manually set before measurement so it lies in its preferred direction.
FIG. 7 consists of four graphical embodiments entitled STAGED
REGRESSION STEPS FOR DYE BLEND CALCULATIONS. It is a graphic representation of the calculations required to obtain colorant light absorption, scattering, and blending coefficients. The example assumes that the blended colorants consist of two dyes applied to a textile substrate. Dyes 1 and 2 are blended at relative concentrations C1 and 2 OI) C2, respectively. C1, Cz and R are depicted by coordinate axes at right angles.
Refer to STEP 1 of FIG. 7. As stated earlier, it is computationally simpler to use the ratio K/S rather than R. The mathematical connection between K/S and R is shown in Step 1 of FIG. 7.
All calculated predictions are obtained from measurements of undyed or dyed samples. One sample must have no colorant applied (C1 = CZ = 0), and is the point labeled "No Dye". This point has the lightest measured color, so the measurement is shown as the data point highest in the R
direction.

.. .
Several samples must have different amounts of Dye 1. These are the points labeled "33% Dye 1", "66% Dye 1", and "100% Dye 1", and all lie in the plane formed by the C1 and R axes. These points are lower (darker) then the "No Dye" measurement. The greater the amount of Dye 1, the closer (darker) the measurements move towards the C1 axis.
Similar statements can be made for the samples with different amounts of Dye 2. In this example, measurements of R for Dye 2 are smaller than for Dye 1. This means Dye 1 is lighter in color than Dye 2 for color component R.
STEP 1 also shows three measurements with different blends of Dyes 1 and 2. Only one measurement is labeled, "50% Dye 1 + 50% Dye 2". A
dashed line lies in the plane formed by the C1 and CZ axes. The points on this line satisfy the equation C1 + CZ - 100%. It is convenient to prepare blend samples so this equation is satisfied. The three two-dye blend colors shown in the drawing satisfy this relationship, and therefore lie above the dashed line in this three dimensional space.
For example, the other two points can be "33% Dye 1 + 67% Dye 2" and "67% Dye 1 + 33% Dye 2". The sum of the blend concentrations is then 100% for both dye blends.
2 0 In summary, if we viewed the coordinate system in the drawing down along the R axis, then the one-dye measurements would be projected onto the C1 or Cz axes, and the two-dye blend measurements would be projected onto the dashed line crossing the C1 and CZ axes. Arbitrary blends satisfying the constraint C1 + CZ < 100% would fall inside the triangle formed by these three lines.
Refer to STEP 2 of FIG. 7. The first stage in the cPriac of regressions uses samples without colorants to compute Ko. A 100% wet out solution without colorant must sometimes be applied to uncolored substrates (such as greige textile fabric), and be processed as part of mix blanket samples, if it imparts any color or otherwise alters ~ , ~ ~ ~. ' ~y .
appearance. This "clear" solution is sometimes used to blend colorants on a substrate. It would therefore be used during the creation of the colorant dilution and binary colorant blend samples.
Zero colorant sample measurements are used to compute the light absorption coefficient for the substrate, ICo. If we stop our calculations at this point, and use K/S-1~ to predict colors for blends of Dye 1 and 2, the predictions would only match the measurement when C1 - CZ - 0. Predictions are denoted in Step 2 of FIG. 7 by the triangular plane of predictions intersecting the "No Dye" point. In this first stage of the regression, only the "No Dye" prediction matches the measurements.
Refer to STEP 3 in FIG. 7. This step uses colored samples to compute K1, S1, K2, and SZ. It is recommended that each colorant have at least five different concentrations, although only three are shown in FIG. 7. 08 concentration is not used in this step, but it should include 1008 concentration. One possible set is 15~, 20$, 30$, 50$, and 1008. The choice of uneven concentration increments is more likely to produce a visually uniform color gradient. Small amounts of colorant have a strong impact on final color. If ten different concentrations 2 0 can be accommodated, a possible set is 15$, 20$, 25$, 308, 35$, 40$, 508, 60~;, 808, and 100.
Single colorant dilution measurements are used to compute light absorption and scattering coefficients. These new terms are added to the formula for K/S, as shown in STEP 3. Also shown as solid lines is the new prediction surface. The new predictions lie close to the single dye measurements. They do not match perfectly because the calculation is a least squares fit. Goodness of fit are limited by measurement precision, and by degrees of freedom in our mathematical model. Note the prediction still matches the "No Dye" measurement. The second stage 3 0~ of regression does not disturb the first stage of regression. However, ~ !, n ~i the prediction surface still does not match the dye blend measurements satisfactorily.
Refer to STEP 4 of FIG. 7. The final step uses pairs of colorants to establish K13. It is recommended that each colorant have at least five different concentrations, although only three are shown in FIG. 7.
08 and 1008 concentrations must not be used. One possible set is 15%/85%, 33%/67%, 508/508, 67%/338, and 858/158. If ten different concentrations can be accommodated, one possible set is 158/858, 208/80%, 25%/75%, 30%/70%, 408/60%, 608/40%, 708/30%, 75%/258, 80%/20%, and 85%/15%. The choice of uneven concentration increment is more likely to produce a visually uniform color gradient. Small amounts of colorant have a strong impact on final color.
Colorant pair blending measurements are used to compute light absorption blending coefficients. This adds one more term to the formula for K/S, as shown in STEP 4. Now the prediction curve satisfactorily predicts all of the dye measurements. Again, the final predictions do not match perfectly because the calculation is a least squares fit. This third regression stage has no effect on no-dye or dye pair blending predictions.
2 0 In summary, the modified Kubelka-Munk Model is fit to measurements in stages, each successive stage including more measurement data, and further reducing the total least squares error. The accuracy of prior predictions are not affected. The algebraic reason for this decoupling is that each expression for the numerator K and denominator S in the equation for K/S contains increasingly higher ordered products of colorant concentrations. If both colorant concentrations are zero, ail terms with C1, C2, and C1*C2 vanish. The only term left is the one shown in STEP 2. If one colorant concentration is zero, terms with C1*CZ
vanish. The only terms left are ones shown in STEP 3. Only when both h r1 .a d -. ..
L e: ,' ~_J
concentrations are non-zero, so that the C1*CZ term is present, does all of the terms shown in STEP 4 apply.
Predictions of colorant blends fall on the curved surface shown in STEP 4 of the drawing. Predictions are satisfactory for our specified applications over the entire surface. Arbitrary predictions are interpolations based on the K/S model, made with the shown formula (the same as Equation 7.0). When three colorants are involved, the interpolation region is a volume, and so on. While this mathematical process can be extended to higher order terms (e.g., Slz, K123, Si23, and 10~~ so on), we find this is unnecessary for tristimulus coordinate prediction.
The addition of a third colorant does not affect the values of Ko, K1, S1, KZ, S2, or K12. But we must compute coefficients K3, S3, K13, and K23, if predictions are desired for blends involving the third colorant.
Again, all of the prior predictions for blends of Dye 1 and Dye 2 remain unaffected, even though extra terms are added to the K/S equation.
TABLE 5 through TABLE 7 show a lists of light absorption, light scattering, and light absorption blend coefficients for seven textile dyes. These dyes were applied to carpet substrates by spraying the dyes 2 OII under computer control. There are three dark dyes ("deep"), three medium dyes ("pale"), and one light dye (yellow). Blend predictions for a subset of four dyes (pale red, pale green, pale blue and yellow), are shown in TABLE 8 through TABLE 11.
The third and final aspect of this Invention is to display the 25I~ calculated blend colors on an RGB based electronic display. It is common for computerized design systems to display colors on cathode ray tubes (CRTs). Any electronic display using RGB values, such as liquid crystal displays, among others, can be employed for the purposes of this Application. Cathode ray tubes (CRTs) emit light in three primary 30II colors. This excites the red, green and blue receptors in the human ~nn.' ar~-;
!. ~ ... _ retina. For convenience, we refer to CRT displays in this Application, although any RGB based electronic display can be used such as an electroluminiscent display or a plasma display. Colors emitted by electronic displays are measured by a radiometers or chrome meters (e.g., Minolta~ TV-Color Analyzer II, Minolta~ CRT Color Analyzer CA-100, Minolta~ Chrome Meter CS-100). Of the various color coordinates available from color measurement devices, as previously stated, XYZ
tristimulus values are chosen in this Application.
XYZ values measured from devices that emit light have dimensions;
e.g., candelas per square meter. These measurements are said to be absolute. Relative XYZ values will now be denoted X'Y'Z'. These values are dimensionless, and usually expressed as a percentage. Different absolute measurements for the same white media (having the same chromaticity) are usually scaled to the same relative values for electronic visual display or computer imaging hardcopy applications.
The maximum Y value possible for a display device is sometimes chosen to convert absolute XYZ measurements into relative X'Y'Z' values. For example, if the maximum Y value possible for a CRT is 80cd/m2, and one displayed color measures X - 60cd/m2, Y = 70cd/mz, Z = 75cd/m2, then the corresponding relative X'Y'Z' values are X' = 75.00, Y' = 87.50, and Z' - 93.75. Although these are percentages, the percent sign is customarily omitted.
As discussed earlier in this Application, it is common for color measurements to be expressed in terms of chromaticity x and y, and "luminance" Y. Conversion between XYZ values to xyY values is accomplished as described earlier in this Application. Note that the dimensioned values of X and Y are thereby converted into dimensionless values of x and y. The chromaticity range of a typical CRT color monitor used for computer aided design is shown in FIG. 3, and compared with chromaticities of Macbeth~ ColorChecker~ colors.

., ..
t. ~~ .l. .. ~.' ;j Current electronic color displays do not use XYZ values directly to display colors. Such devices commonly use RGB values, indicating the strength of red, green, and blue phosphor light emission. Red, green, and blue color components are denoted as R, G, and B, respectively. RGB
values commonly range from 0 through 255. We show how to convert from absolute XYZ tristimulus values to RGB electronic display values.
FIG. I shows a CRT display as 4, that accepts and returns a color as RGB
values. Conversion between XYZ and RGB values is performed by 6 in FIG. 1, a CRT Model Algorithm.
In phase one of the computations, separate measurements are made of the red, green, and blue CRT phosphors at different brightnesses.
This must be done for several levels of RGB values. A typical set of RGB values for the phosphor measurements are 50, 100, 150, 200, 225, and 255. It is preferable to include the smallest RGB value that provides a dependable measurement. This is about Y = 0.6 cd/m2 for the Minolta~
TV-Color Analyzer II, and about Y - 0.3 cd/m2 for the Minolta~ CRT Color Analyzer CA-100. This data collection step is numeral 260 in FIG. 8.
In this document, RGB and XYZ values are normalized so values fall mostly between 0 and 1. This step is denoted in FIG. 8 by numeral 270.
These measurements are used to compute model parameters that are characteristic of the red, green, and phosphors. In phase two of the computations, a mixing matrix is computed so any color can be converted, not just colors produced when one phosphor is on.
Earlier in this Application the Image Digitizer Model Algorithm (5 2 5 in FIG. 1) was described. The CRT Model Algorithm (6 in FIG. 1) for electronic color display is very similar. In fact, the CRT Model Algorithm came first and was adapted for digitizer color measurement to create the Digitizer Model Algorithm for this Invention. The terminology used in the CRT Model Algorithm (e. g., gamma, gain, offset) 3 0 are associated with the internal electronics of a CRT; e.g., electron fn ~ ~
9.i t.' ~. ... ., J
beam intensity and amplifier voltages. As this Application demonstrates, the mathematical aspects of the model can be adapted to RGB based devices such as image digitizers and other kinds of electronic color display devices.
Tristimulus values for red, green, and blue CRT phosphors are denoted by Xr, Y6, and Zb, respectively, and are generically referred to as XrYaZb values. X= is the X value measured when only the red phosphor is turned on (G and B are zero), Ya is the Y value measured when only the green phosphor is turned on (R and B are zero), and Zb is the Z
value measured when only the blue phosphor is turned on (R and G are zero).
For a CRT, gamma is the parameter that characterizes the nonlinear relationship between the electron beam acceleration voltage and the resulting color brightness. Gamma values for the red, green and blue phosphors are denoted as gr, g8, and gb, respectively. These are collectively referred to as "gamma" or g.
For a CRT, gain is the parameter that characterizes the perceived contrast level of resulting colors. Gain values for the red, green and blue phosphors are denoted as Gr, G8, and Gb, respectively. These are 2 0 collectively referred to as "gain" or G.
For a CRT, offset if the parameter that characterizes the perceived brightness of resulting colors. Offset values for the red, green and blue phosphors are denoted as Or, Og, and Ob, respectively.
These are collectively referred to as "offset" or 0.
Gain, offset and gamma parameters in the CRT Model Algorithm define a quantitative relationship between measured color (absolute XYZ
tristimulus values) and CRT color coordinates color components (RGB
values) for each CRT phosphor. This is shown in the following equations. You will notice these equations are identical to those l.~ '1 _~ t_ ~J .3 presented earlier in this Application for the Image Digitizer Model Algorithm.
X= - (Gr + Or*R)8r Eq. 1.0 Y~ - (G8 + Og*G)gg Eq. 1.1 Zb - (Gb + Ob*B)6b Eq. 1.2 We now explain how to compute the CRT model parameters from the color phosphor measurements. X= is measured when only the red phosphor is turned on (G and B are zero), Y8 is measured when only the green phosphor is turned on (R and B are zero), and Zb is measured when only the blue phosphor is turned on (R and G are zero). The first step is to chose either the red, green or blue phosphor for further computation as designated by numeral 280 in FIG. 8. Equations 1.0, 1.1 and 1.2 are in the following form (x and y are not chromaticity variables):
y - (G + 0*x)g Eq. 2.0 1511 Equation 2.0 can be rewritten as an equation linear in y1~8. That is, a graph of x as a function of yl~g is a straight line.
yl~g - G + 0*x Eq . 2 .1 For specific values of g, G, and 0, we define a least squares error E.
A subscript m denotes individual measurements xm (representing Rm or Gm or Bm) and ymli8 (representing X~l~gr or Y~1~$8 or Z~l~Bb) . There is a total of N measurements for a phosphor, so m ranges from 1 to N. The number of measurements per phosphor need not be the same.
i Ea=~ (y g-G-O*xm) 2 Eg. 2 .2 m~i C'. ~, n . a _. ..
_..
For computational purposes, an expanded form of Equation 2.2 is preferred. Equation 2.3 is expressed in terms of summations that will already exist in prior computational steps in the final algorithm.
E2 - Syy - 2GSy - 20Sxy + OZS,a + 2GOSz + GZS Eq. 2.3 The following summation equations determine the "S" variable values:
x S = ~ (1) Eq. 2.4 a-1 H
SR = ~ (xa) Eg. 2.5.
m H
S~ _ ~ ( x~ ) Ear. 2 . 6 r1 N _1 Sy = ~ (y1g) Eq. 2.7 1r-1 Syy = ~ (ym9) Eg. 2.8 r1 X _1 S,~y = ~ (xm ymg) Eq. 2.9 m-1 The variable S in Equation 2.4 is equal to the number of phosphor measurements. Equation 2.1 is nonlinear in g. Because of this nonlinearity, our approach is not to minimize the least squares error found in Equation 2.3 for g, G, and 0 simultaneously. Instead, we pick a reasonable value for g (290 in FIG. 8) and find G and 0 that minimize the least squares error (300 in FIG. 8). For this g, G and 0 are given c) ~ n .' , ., .
G! (: ~~ :. .:. _: .i by Equations 3.0, 3.1, and 3.2. These Equations are solutions to the least squares fit for a given value of g.
D - SaS - Sx2 Eq . 3 . 0 G - ( SaSy - S;S,~y ) /D Eq . 3 .1 0 - (-SzSy + S Sxy)/D Eq. 3.2 Our chosen g and the computed optimal values for G and 0 can be put into Equation 2.3 to compute the least squares error E (or EZ) as designated by numeral 310 in FIG. 8. We then can pick another value of g, which allows us to compute another set of optimal values of G and 0, that in turn gives a new least squares error. This step is designated by numeral 320 in FIG. 8. For two estimates of g, the better value is the one giving the smaller least squares error E (or EZ). The least squares error E is not sensitive to changes in gamma g by differences of 0.25 The algorithm chooses values of g from 1 through 5 in increments of 0.25 As outlined above, for each g, compute G and 0 from Equations 2.4 through 2.9, and 3.0 through 3.2, and least squares error EZ from Equation 2.3 The best value of g is the one minimizing E2. This final selection of g is designated by numeral 330 in FIG. 8.
As previously stated with regard to numeral 280 of the flowchart 2 0 in FIG. 8, this calculation is repeated separately for the red, green, and blue components of the corresponding measured phosphor colors. This step is designated by numeral 340 in FIG. 8, which will repeat steps 290, 300, 310, 320, and 330 in FIG. 8 for each CRT phosphor.
Once gamma, gain, and offset parameters are computed, Equation 1.0 predicts Xr, from R, when G and B are zero, with minimized error. And so on for the green and blue phosphors (only one phosphor on, the other two off). Equations 1.0, 1.1, and 1.2 do not by themselves accurately predict arbitrary colors.

..
C! ~j ',. . _~i 'J~
The next step is to use all of the phosphor measurements to convert RGB values of arbitrary colors into XYZ values (or vice versa).
One of Grassman's Laws provides an approximate way to calculate tristimulus values for arbitrary colors. It is applicable because CRT
monitors creates colors by additive color mixing. A mixing matrix M
produces a linear combination of the phosphor tristimulus values.
Define the column matrix of measured tristimulus coordinates for any color as:
X
X YI Eq. 4.0 and the column matrix of predicted XYZ values computed from Equations 101 1.0, 1.1 and 1.2, as:
Xr(R) X~gy = Yy(G) Eq. 4.1 Zb(B) Then X and Xrgb are connected by the linear relationship X - MXrBb Eq . 4 . 2 where M is a 3x3 matrix. M is computed from all of the measurements used to compute the gain, offset and gamma parameters, in a least 15 squares (pseudo-inverse) fashion, as follows. Define a 3x3N matrix Q
whose columns are the 3N phosphor measurements Xm of the kind defined in Equation 4.0 Recall there are N measurements each for red, green, and blue phosphors, hence there are 3N columns to the matrix.

n r~ .I ,! r' r' v ..; .. .". ~. :f p = ~ X~ Xi X~ . . . XN ~ Eq. 4 . 3 Also define a 3x3N matrix Q=~ containing the corresponding predictions obtained from Equations 1.0, 1.1 and 1.2 for the same 3N
measurements.
Qrgn = ~ XzgDi XrgDa XrgDJ . . . Xzg~, ~ Eq. 4 . 4 The computation of Q and Qr~ from XYZ measurements and predictions of all phosphor color measurements is designated as numeral 350 in FIG. 8. The columns of Q and Qr$b are connected by matrix M in Equation 4.2, so therefore:
Q - MQrBb Eq . 4 . 5 This holds true if the CRT model (Equations 1.0, 1.1, and 1.2) is exactly true and color measurements are without error. The model and data are not exact, so the "best" (least squares) solution is obtained by solving Equation 4.5 using a pseudo-inverse as follows:
M ° Q(QrgbQrgbT) 1 Eq~ 4.6 Superscript T denotes matrix transpose, and superscript -1 denotes 15 matrix inverse. This step is designated by numeral 360 in FIG. 8. The inverse is performed on a 3x3 matrix. Once the gain, offset, gamma, and mixing matrix M are known, Equations 1.0, 1.1, 1.2 and 4.2 are used to convert CRT R, G, and B into X, Y, and Z for any color. The inverse transformation, converting X, Y, and Z into R, G, and B, is computed as 20 follows:
XrBb - M-1X Eq . 5 . 0 r 1 ~
L; c~' ._ " ~~ .I
R - (Xrl/ar - Gr)/Or Eq. 5.1 G .. (yal/aa _ Ga)/Oa Eq. 5.2 g - (Zbl/6b _ Gi,)/On Eq. 5.3 FIG. 9 shows a graph of CRT model calculations for red, green and blue phosphors for a typical CRT used for computer aided design. XYZ
tristimulus values are plotted against RGB values. FIG. 10 shows CRT
measurements versus predictions for all phosphor colors. XYZ
predictions are plotted against XYZ measurements.
We now have the means to convert between absolute color 1011 measurements (XYZ tristimulus values), and electronic color display components (RGB values). A conversion between absolute color measurements (XYZ tristimulus values), and relative color measurements (X'Y'Z' tristimulus values), is also necessary. There are subtle issues in reproducing colors on an electronic display involving human color vision that are not addressed here. And, to avoid discussing these issues we adopt a linear relationship between XYZ and X'Y'Z'. In matrix notation X - W(X'-B) Eq. 11.0 X'- (X/W)+B Eq. 11.1 2 0 where W and B are scalars. Scalars are used so the red, green, and blue color components are identically weighted. W and B adjust levels of light and dark colors, respectively. X and X' are three component column matrices representing XYZ and X'Y'Z', respectively.
When B - 08, colors are usually perceived to be washed out on 25 typical CRT color displays, and black is not dark enough. Increasing B
improves color contrast. We find B - 2$ gives best results. If necessary, B can be a negative number, and W can be greater than one. W

2 .~ ~ ) ~ s. ~ a can be calculated so computed RGB values never exceed their limit, usually values of 255. By choosing a suitable white standard (for example, white in the Macbeth~ ColorChecker~ color set), and comparing these relative X'Y'Z values to the absolute XYZ values obtained with a CRT when RGB values are at their maximum level, Equation 11.0 can be use to compute W. (Explicit formulas can be derived for this purpose.) This allows the full range of CRT luminance to be used for displaying colors. W is responsible for converting absolute color measurements XYZ
to relative color measurements X'Y'Z', and is therefore not dimensionless. The selection or computation of brightness W and contrast B is designated by numeral 370 in FIG. 8.
We now have the means to convert between relative color measurements (X'Y'Z' tristimulus values) obtained from color measurement equipment, and computer color components (RGB values). This step is designated by numeral 380 in FIG. 8. This is also shown in FIG. 1 as the retrieval o~ XYZ data from the XYZ COLOR DATABASE 7, performing the above operations using the CRT MODEL ALGORITHM 6, and then displaying the RGB values on the CRT DISPLAY 4. Furthermore, RGB values obtained from the CRT DISPLAY 4, can be transformed into XYZ coordinates by the 2 0 CRT MODEL ALGORITHM 6, and then sent back to the XYZ COLOR DATABASE 7.
It is not intended that the scope of the invention be limited to the specific embodiments illustrated and described. Rather, it is intended that the scope of the invention be defined by the appended claims and their equivalents.

t ~. ~ r? -J

N0. NAME x y Y X Y Z

1 Dark Skin 0.4000.35010.111.5410.107.21 2 Light Skin 0.3770.34535.839.1235.8028.85 3 Blue Sky 0.2470.25119.318.9919.3038.60 4 Foliage 0.3370.42213.310.6213.307.60 Blue Flower0.2650.24024.326.8324.3050.12 6 Bluish Green0.2610.34343.132.8043.1049.76 7 Orange 0.5060.40730.137.4230.106.43 8 Purplish 0.2110.17512.014.4712.0042.10 Blue 9 Moderate 0.4530.30619.829.3119.8015.59 Red Purple 0.2850.2026.6 9.31 6.60 16.76 11 Yellow Green0.3800.48944.334.4344.3011.87 12 Orange Yellow0.4730.43843.146.5443.108.76 13 Blue 0.1870.1296.1 8.84 6.10 32.34 14 Green 0.3050.47823.414.9323.4010.62 Red 0.5390.31312.020.6612.005.67 16 Yellow 0.4480.47059.156.3359.1010.31 17 Magenta 0.3640.23319.830.9319.8034.25 18 Cyan 0.1960.25219.815.4019.8043.37 19 White 0.3100.31690.088.2990.00106.52 Neutral 0.3100.31659.157.9859.1069.95 8.0 21 Neutral 0.3100.31636.235.5136.2042.84 6.5 22 Neutral 0.3100.31619.819.4219.8023.43 5.0 23 Neutral 0.3100.3169.0 8.83 9.00 10.65 3.5 24 Black 0.3100.3163.1 3.04 3.10 3.67 ~1 ~
V .I

N0, NAME X Y Z R G B

1 Dark Skin 11.54 10.107.21 110 70 62 2 Light Skin 39.12 35.8028.85190 142 135 3 Blue Sky 18.99 19.3038.6099 119 158 4 Foliage 10.62 13.307.60 84 91 64 Blue Flower26.83 24.3050.12133 128 179 6 Bluish Green32.80 43.1049.76128 181 174 7 Orange 37.42 30.106.43 192 110 69 8 Purplish 14.47 12.0042.1086 92 168 Blue 9 Moderate 29.31 19.8015.59181 88 105 Red Purple 9.31 6.60 16.7690 64 106 11 Yellow Green34.43 44.3011.87150 170 88 12 Orange Yellow46.54 43.108.76 203 146 80 13 Blue 8.84 6.10 32.3463 64 157 14 Green 14.93 23.4010.6287 135 88 Red 20.66 12.005.67 173 63 64 16 Yellow 56.33 59.1010.31221 186 82 17 Magenta 30.93 19.8034.25183 96 151 18 Cyan 15.40 19.8043.3780 126 165 19 White 88.29 90.00106.52250 249 253 Neutral 57.98 59.1069.95197 199 215 8.0 21 Neutral 35.51 36.2042.84154 153 169 6.5 22 Neutral 19.42 19.8023.43116 114 127 5.0 23 Neutral 8.83 9.00 10.6580 70 88 3.5 24 Black 3.04 3.10 3.67 39 34 43 1 ~ i i i r i i i f' n .[ .i r~ ~;
J J .v . -, COMPUTED
IMAGE

MODEL
PARAMETERB
gamma gain offset 2.00 0.0169 0.9480 2.25 0.0985 0.8825 B 2.75 0.1492 0.8760 r i i i COMPUTED IMAGE DIGITIZER MODEx. Pl~RAMETERS
0.5003 0.4049 0.0609 0.2182 0.8769 -0.0835 -0.0213 0.0398 1.0050 r ~~ ~
t ., ~ . .i Kox Koy Koz 0.093280.068760.06218 DYE DYE Kx Ky Kz Sx Sy Sz NO. NAME

1 Deep 16.254932.802274.90942.58972.23560.0515 Red 2 Deep 14.74519.7676 10.28590.36860.48310.3583 Green 3 Deep 12.731910.48753.05450.80230.63340.7765 Blue 4 Pale 1.8067 2.0707 3.19581.65991.43891.2618 Red Pale 2.3385 1.9950 4.18970.99570.92601.0124 Green 6 Pale 3.06$7 2.4645 1.71750.67890.63290.6966 Blue 7 ellow 0.8954 0.7291 3.24581.93941.33450.8841 ~/1 n r~ .t ~ r- .
4J ~-t t.~ '. _ ..' ~j Dye Dye Dye Blend Kid= Ki~y K!~=
No No . .

i j 1 2 Deep Red 142.4729199.413063.1336 +

Deep Green 1 3 Deep Red 189.8662252.6969133.5376 +

Deep Blue 2 3 Deep Green21.659113.24529.8802 +

Deep Blue 4 5 Pale Red 3.1668 2.6439 4.5439 +

Pale Green 4 6 Pale Red 7.2048 5.1524 2.1763 +

Pale Blue 6 Pale Green4.3949 3.2950 1.5603 +

Pale Blue 4 7 Pale Red 2.1295 2.0346 6.9012 +

Yellow 5 7 Pale Green2.8697 1.7687 4.4579 +

Yellow 6 7 Pale Blue 3.9054 1.6108 1.4522 +

Yellow 4 3 Pale Red 13.79537.9671 1.5650 +

Deep Blue 7 3 Yellow 21.30278.4927 3.4470 +

Deep Blue r n ~ r r-~ eJ '. ... .

DYES TO BLEND: Pale Pale Green Red +
+
Pale Blue + Yellow Dye Kx Ky Rz Sx Sy Sz No.

4 1.8067 2.07073.19581.6599 1.43891.2618 2.3385 1.99504.18970.9957 0.92601.0124 f> 3.0687 2.46451.71750.6789 0.63290.6966 '7 0.8954 0.72913.24581.9394 1.33450.8841 ~ ~ ~ ~ ~ O

(1 ~ ! i U r.' 1.. ...

DYE KI~x Ki~Y Ki~z NUMBERS
.~ 5 3.1668 2.6439 4.5439 7.2048 5.1524 2.1763 .t. 6 4.3949 3.2950 1.5603 2.1295 2.0346 6.9012 .+. 7 2.8697 1.7687 4.4579 .t. 7 3.9054 1.6108 1.4522 (': y w ~ ... ..

BLEND
COLOR

C1 CZ C3 C~ (K/S)=(K/S)y(K/S)sX Y Z

0.0 0.0 0.00.00,09330.06880.062265.1469.1670.41 0.0 0.0 0.00.10.15310.12500.355357.8960.9644.05 0.0 0.0 0.10.20.45150.37080.731839.9443.3231.79 0.0 0.1 0.20.30.89030.73821.361728.6231.6522.22 0.1 0.2 0.30.41.42761.23112.162621.5523.6716.23 0.2 0.3 0.40.31.93261.67942.496517.5819.3614.61 0.3 0.4 0.30.21.93661.73092.603317.5518.9714.15 0,4 0.3 0.20.11.60981.49292.218519.9220.9415.93 0.3 0.2 0.10.01.07871.02051.453825.6326.4821.30 0.2 0.1 0.00.00.52520.53270.894837.3637.1228.54 0.1 0.0 0.00.00.23490.24110.339051.0350.6044.85 CRT
MEASUREMENTS

R G B Y x y 255 0 0 23.30 0.630 0.336 225 0 0 17.30 0.630 0.336 200 0 0 13.00 0.630 0.336 150 0 0 6.35 0.630 0.336 100 0 0 2.28 0.628 0.336 50 0 0 0.36 0.611 0.335 0 255 0 75.50 0.270 0.608 0 225 0 56.00 0.270 0.609 0 200 0 42.50 0.271 0.609 0 150 0 21.30 0.272 0.609 0 100 0 7.88 0.272 0.609 0 50 0 1.30 0.273 0.602 0 40 0 0.71 0.273 0.596 0 30 0 0.32 0.273 0.578 0 0 255 9.50 0.143 0.057 0 0 225 7.10 0.143 0.057 0 0 200 5.35 0.143 0.057 0 0 150 2.67 0.143 0.057 0 0 100 0.97 0.143 0.058 0 0 80 0.55 0.143 0.058 0 0 60 0.26 0.144 0.060 igh Resolution Sony~
Monitor using a Minolta~

i1 r, ~, .~ ~ ... .., ~~ :J c: .. . _ ~ i COMPUTED
CRT
MODEL.
PARANBTBRS
gamma gain offset 2.25 -0.0384 0.7297 2.25 -0.0327 0.9134 g 2.25 -0.0579 1.1958 COMPUTED CRT MODEL PARAMETERS
1.0017 0.4450 0.1787 0.5343 1.0018 0.0712 0.0541 0.1996 0.9996

Claims (40)

1. A process for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:

(a) scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;

(b) scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a colorimeter;

(c) normalizing said RGB target color values and said XYZ target tristimulus color values;

(d) picking a value of gamma (g) for an X tristimulus color value of said target gray shades;

(e) computing a least squares fit for said picked value of gamma (g) with following formulas:

D = S xx S - S x2 G = (SxxSy - SxSxy)/ D
O = (-SxSy = SSxy)/ D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m=Said normalized R m (red) or G m (green) or B m (blue) target color values ym1/g9=Said normalized X m1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;

(f) computing a least squares error (E) with following formula:

E2 =S yy -2GS y -2OS xy +O2 S xx +2GOS x +G2 S;

(g) repeating steps (d) through (f) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X tristimulus value;

(h) repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y tristimulus value;

(i) repeating steps (d) through (f) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z tristimulus value;

(j) scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;

(k) constructing matrix Q from following equations:

X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1 X2 X3... X N¦

Q=Matrix of said X matrices numbering total number of gray shade measurements;

(I) constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:

X r = (G r + O r * R)gr Y g +(G g + O g *G)gg Z h = (G h + O h * B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb =¦X rgb1 X rgb2 X rgb3...X rgbN¦
Q rgb =Matrix of said X rgb matrices numbering total number of gray shade measurements;

(m) constructing a mixing matrix M from following equation:

M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;

(n) utilizing said mixing matrix (M) and said matrix X rgb with the following formula:

X=MX rgb to create XYZ values; and (o) storing said XYZ values on a computer for reproduction on an electronic display.
2. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 1, wherein said sample is comprised of a textile material.
3. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 2, wherein said textile material is comprised of carpeting.
4. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 1, wherein said sample is comprised of paper and colorants.
5. A process for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:

(a) scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;

(b) scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a spectrophotometer;

(c) normalizing said RGB target color values and said XYZ target tristimulus color values;

(d) picking a value of gamma (g) for an X tristimulus color value of said target gray shades;

(e) computing a least squares fit for said picked value of gamma (g) with following formulas:

D = S xx S - S x2 G = (SxxSy - SxSxy)/ D
O = (-SxSy = SSxy)/ D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X rm1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;

(f) computing a least squares error (E) with following formula:

E2 =S yy -2GS y -2OS xy +O2 S xx +2GOS x +G2 S;

(g) repeating steps (d) through (f) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X tristimulus value;

(h) repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y tristimulus value;

(i) repeating steps (d) through (f) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z tristimulus value;

(j) scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;

(k) constructing matrix Q from following equations:

X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1 X2 X3...X N¦

Q=Matrix of said X matrices numbering total number of gray shade measurements;

(I) constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:

X r = (G r + O r * R)gr Y g + (G g + O g * G)gg Z h = (G h + O h * B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb =¦X rgb1 X rgb2 X rgb3...X rgbN¦

Q rgb =Matrix of said X rgb matrices numbering total number of gray shade measurements;
(m) constructing a mixing matrix M from following equation:
M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(n) utilizing said mixing matrix (M) and said matrix X rgb with the following formula:
X=MX rgb to create XYZ values; and (o) storing said XYZ values on a computer for reproduction on an electronic display.
6. A process for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:
(a) scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;
(b) scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a chroma meter;
(c) normalizing said RGB target color values and said XYZ target tristimulus color values;
(d) picking a value of gamma (g) for an X tristimulus color value of said target gray shades;
(e) computing a least squares fit for said picked value of gamma (g) with following formulas:

D = S xx S-S x 2 G = (SxxSy - SxSxy)/D
O = (-SxSy = SSxy)/D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X rm1/gr(red) or Y gm1/gg(green) or Z bm1/gb(blue) target tristimulus color values S=Summation variables;
(f) computing a least squares error (E) with following formula:
E2 =S yy -2GS y -2OS xy+O2S xx+2GOS x +G2 S;
(g) repeating steps (d) through (f) in order to find optimal values of gamma (g,), gain (G r), and offset (O r) to minimize error (E) for an X tristimulus value;

(h) repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y tristimulus value;
(i) repeating steps (d) through (f) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z tristimulus value;
(j) scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;
(k) constructing matrix Q from following equations:

X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1X2X3. . . X N¦
Q=Matrix of said X matrices numbering total number of gray shade measurements;
(I) constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:
X r=(G r+O r*R)gr Y g+(G g+O g*G)gg Z b=(G b+O h*B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb=¦X rtb1X rgb2X rgb3 . . . X rgbN¦

Q rgb =Matrix of said X rgb matrices numbering total number of gray shade measurements;
(m) constructing a mixing matrix M from following equation:
M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(n) utilizing said mixing matrix (M) and said matrix X rgb with the following formula:
X=MX rgb to create XYZ values; and (o) storing said XYZ values on a computer for reproduction on an electronic display.
7. A system for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:
(a) a means for scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;
(b) a means for scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a colorimeter;
(c) a means for normalizing said RGB target color values and said XYZ target tristimulus color values;
(d) a means for picking a value of gamma (g) for an X tristimulus color value of said target gray shades;
(e) a means for computing a least squares fit for said picked value of gamma (g) with following formulas:

D=S xx S-S x2 G = (SxxSy - SxSxy)/D
O=(-SxSy=SSxy)/D
N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g=Said normalized X rm1/gr(red) or Y gm1/gg(green) or Z bm1/gb(blue) target tristimulus color values S=Summation variables;
(f) a means for computing a least squares error (E) with following formula:
E2 =S yy-2GS y-2OS xy+O2S xx+2GOS x+G2S;

(g) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X
tristimulus value;
(h) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y
tristimulus value;
(i) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g b)1 gain (G b), and offset (O b) to minimize error (E) for a Z
tristimulus value;
(j) a means for scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;
(k) constructing matrix Q from following equations:
X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1X2X3 . . . X N¦
Q=Matrix of said X matrices numbering total number of gray shade measurements;
(I) a means for constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:
X r=(G r+O r*R)gr Y g+(G g+O g*G)gg Z b=(G b+O h*B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb=¦X rbg1X rgb2X rgb3 . . . X rgbN¦
Q rgb=Matrix of said X rgb matrices numbering total number of gray shade measurements;
(m) a means for constructing a mixing matrix M from following equation:
M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(n) a means for utilizing said mixing matrix (M) and said matrix X rgb with the following formula:

X=MX rbg to create XYZ values; and (o) a means for storing said XYZ values on a computer for reproduction on an electronic display.
8. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 7, wherein said sample is comprised of a textile material.
9. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 8, wherein said textile material is comprised of carpeting.
10. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 7, wherein said sample is comprised of paper and colorants.
11. A process for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:
(a) a means for scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;

(b) a means for scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a spectrophotometer;
(c) a means for normalizing said RGB target color values and said XYZ target tristimulus color values;
(d) a means for picking a value of gamma (g) for an X tristimulus color value of said target gray shades;
(e) a means for computing a least squares fit for said picked value of gamma (g) with following formulas:

D=S xx S-S x2 G=(SxxSy-SxSxy)/D
O=(-SxSy=SSxy)/D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X rm1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;
(f) a means for computing a least squares error (E) with following formula:
E2=S yy -2GS y-2OS xy+O2 S xx+2GOS x+G2 S;
(g) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X
tristimulus value;
(h) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y
tristimulus value;
(i) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z
tristimulus value;
(j) a means for scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;
(k) constructing matrix Q from following equations:
X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1X2X3. . . X N¦
Q=Matrix of said X matrices numbering total number of gray shade measurements;
(I) a means for constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:

X r=(G r+O r*R)gr Y k+(G g+O g*G)gg Z n=(G b+O b*B)gb X rgb=Matrix of said X r and said Y g and said Z b values Q rgb=¦X rgb1 X rgb2 X rgb3. . . X rgbN¦
Q rgb=Matrix of said X rgb matrices numbering total number of gray shade measurements;
(m) a means for constructing a mixing matrix M from following equation:

M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(n) a means for utilizing said mixing matrix (M) and said matrix X rgb with the following formula:

X=MX rgb to create XYZ values; and (o) a means for storing said XYZ values on a computer for reproduction on an electronic display.
12. A process for scanning RGB values of a sample utilizing an image digitizer and converting said RGB values of said sample to XYZ values comprising the steps of:
(a) a means for scanning a color target chart having gray shades with same chromaticities with an image digitizer to collect RGB target color values;

(b) a means for scanning said color target chart having gray shades with same chromaticities to collect XYZ target tristimulus color values with a chroma meter;
(c) a means for normalizing said RGB target color values and said XYZ target tristimulus color values;
(d) a means for picking a value of gamma (g) for an X tristimulus color value of said target gray shades;
(e) a means for computing a least squares fit for said picked value of gamma (g) with following formulas:
D = S xx S - S x2 G = (SxxSy - SxSxy)/ D
O = (-SxSy = SSxy)/ D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness x m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X m1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;
(f) a means for computing a least squares error (E) with following formula:

E2 =S yy -2GS y -2OS xy +O2 S xx +2GOS x +G2 S;
(g) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X
tristimulus value;
(h) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y
tristimulus value;
(i) a means for repeating steps (d) through (f) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z
tristimulus value;
(j) a means for scanning samples with an image digitizer to obtain RGB values of said samples and normalizing said RGB values of said samples;
(k) constructing matrix Q from following equations:

X=Matrix of said normalized XYZ target tristimulus color values Q=¦X1 X2 X3 . . . X N ¦
Q=Matrix of said X matrices numbering total number of gray shade measurements;
(I) a means for constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:

X r = (G r + O r * R)gr Y g +(G g +O g * G)gg Z h = (G h + O h * B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb = ¦X rgb1 X rgb2 X rgb3 . . . X rgbN ¦

Q rgb =Matrix of said X rgb matrices numbering total number of gray shade measurements;
(m) constructing a mixing matrix M from following equation:
M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(n) utilizing said mixing matrix (M) and said matrix X rgb with the following formula:
X=MX rgb to create XYZ values; and (o) a means for storing said XYZ values on a computer for reproduction on an electronic display.
13. A process for converting XYZ values of a sample into RGB values for electronic display comprising the steps of:
(a) choosing a plurality of RGB color values at different brightness levels;
(b) measuring XYZ color values of said RGB color values with a color analyzer on an electronic display;
(c) normalizing said RGB color values and said XYZ color values;
(d) picking a value of gamma (g) for an X tristimulus color value;

(e) computing a least squares fit for said picked value of gamma (g) with following formulas:
D = S xx S - S x2 G = (SxxSy - SxSxy)/ D
O = (-SxSy = SSxy)/ D
N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness X m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X m1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;

(f) computing a least squares error (E) with following formula:

E2 =S yy -2GS y -2OS xy +O2 S xx +2GOS x +G2 S;
(g) repeating steps (e through (g) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X tristimulus value;
(h) repeating steps (e) through (g) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y tristimulus value;
(i) repeating steps (e) through (g) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z tristimulus value;
(j) constructing matrix Q from following equations:

X=Matrix of said normalized XYZ color values Q=¦X1 X2 X3 . . . XN ¦
Q=Matrix of said X matrices numbering total number of phosphor measurements;
(k) constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:
X r = (G r + O ,r * R)gr Y g + (G g + O g * G)gg Z h = (G h + O h * B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb =¦X rgb1 X rgb2 X rgb3 . . . X rgbN ¦

Q rgb =Matrix of said X rgb matrices numbering total number of phosphor measurements;
(I) constructing a mixing matrix M from following equation:

M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(m) retrieving XYZ values of a sample from a memory of a computer in the form of a matrix X;
(n) utilizing said optimal values of gain (G), gamma (g), offset (O) and mixing matrix (M) and said matrix X of said XYZ values of a sample with the following formulas:

X rgb =M -1 X
R=(X r1/gr -G r)/O r G=(Y g1/gg -G g)/O g B=(X b1/gb -G b)/O b to create RGB values of a sample; and (o) displaying said RGB values of a sample on an electronic display.
14. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said sample is a textile material.
15. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 14, wherein said textile material is carpeting.
16. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said sample is paper and colorants.

colorants.
17. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said electronic display is a cathode ray tube.
18. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said electronic display is a liquid crystal display.
19. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said electronic display is a electroluminiscent display.
20. A process for converting XYZ values of a sample into RGB values for electronic display as defined in claim 13, wherein said electronic display is a plasma display.
21. A system for converting XYZ values of a sample into RGB values for electronic display comprising the steps of:
(a) a means for choosing a plurality of RGB color values at different brightness levels;
(b) a means for measuring XYZ color values of said RGB color values with a color analyzer on an electronic display;
(c) a means for normalizing said RGB color values and said XYZ color values;
(d) a means for picking a value of gamma (g) for an X tristimulus color value;
(e) a means for computing a least squares fit for said picked value of gamma (g) with following formulas:

D= S xx S - S x2 G = (SxxSy - SxSxy)/ D
O = (-SxSy = SSxy)/ D

N=Total number of gray shade measurements m=individual gray shade measurements G=Gain which is image digitizer channel contrast O=Offset which is image digitizer channel brightness X m =Said normalized R m (red) or G m (green) or B m (blue) target color values y m1/g =Said normalized X m1/gr (red) or Y gm1/gg (green) or Z bm1/gb (blue) target tristimulus color values S=Summation variables;
(f) a means for computing a least squares error (E) with following formula:
E2 =S yy -2GS y -2OS xy +O2 S xx +2GOS x +G2 S;

(g) a means for repeating steps (e through (g) in order to find optimal values of gamma (g r), gain (G r), and offset (O r) to minimize error (E) for an X
tristimulus value;
(h) a means for repeating steps (e) through (g) in order to find optimal values of gamma (g g), gain (G g), and offset (O g) to minimize error (E) for a Y
tristimulus value;
(i) a means for repeating steps (e) through (g) in order to find optimal values of gamma (g b), gain (G b), and offset (O b) to minimize error (E) for a Z
tristimulus value;
j) a means for constructing matrix Q from following equations:

X=Matrix of said normalized XYZ color values Q=¦X1 X2 X3 . . . X N ¦
Q=Matrix of said X matrices numbering total number of phosphor measurements;
(k) a means for constructing matrices X rgb and Q rgb by utilizing said optimal values of gain (G), gamma (g), offset (O) and said normalized RGB values of said samples with following formulas:

X r = ( G r + O r * R)gr Y g +(G g + O g * G)gg Z b =(G h + O h * B)gb X rgb =Matrix of said X r and said Y g and said Z b values Q rgb =¦X rgb1 X rgb2 X rgb3 . . . X rgbN ¦
Q rgb =Matrix of said X rgb matrices numbering total number of phosphor measurements;
(I) a means for constructing a mixing matrix M from following equation:
M=Q(Q rgb Q rgb T)-1 T indicates a transposed matrix and -1 indicates an inverted matrix;
(m) a means for retrieving XYZ values of a sample from a memory of a computer in the form of a matrix X;
(n) a means for utilizing said optimal values of gain (G), gamma (g), offset (O) and mixing matrix (M) and said matrix X of said XYZ values of a sample with the following formulas:
X rgb =M-1X
R=(X r1/gr -G r)/O r G=(Y g1/gg -G g)/O g B=(X b1/gb -G b)/O b to create RGB values of a sample; and (o) a means for displaying said RGB values of a sample on an electronic display.
22. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 21, wherein said sample is a textile material.
23. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 22, wherein said textile material is carpeting.
24. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 21, wherein said sample is paper and colorants.
25. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 21, wherein said electronic display is a cathode ray tube.
26. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 21, wherein said electronic display is a liquid crystal display.
27. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 21, wherein said electronic display is a electroluminiscent display.
28. A system for converting XYZ values of a sample into RGB values for electronic display as defined in claim 7, wherein said electronic display is a plasma display.
29. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 5, wherein said sample is comprised of a textile material.
30. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 29, wherein said textile material is comprised of carpeting.
31. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 5, wherein said sample is comprised of paper and colorants.
32. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 6, wherein said sample is comprised of a textile material.
33. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 32, wherein said textile material is comprised of carpeting.
34. A process for scanning RGB values of a sample utilizing an image digitizer as defined in claim 6, wherein said sample is comprised of paper and colorants.
35. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 11, wherein said sample is comprised of a textile material.
36. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 35, wherein said textile material is comprised of carpeting.
37. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 11, wherein said sample is comprised of paper and colorants.
38. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 12, wherein said sample is comprised of a textile material.
39. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 38, wherein said textile material is comprised of carpeting.
40. A system for scanning RGB values of a sample utilizing an image digitizer as defined in claim 12, wherein said sample is comprised of paper and colorants.
CA002091155A 1992-03-27 1993-03-05 Method and apparatus for reproducing blended colorants on an electronic display Expired - Fee Related CA2091155C (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CA002444218A CA2444218A1 (en) 1992-03-27 1993-03-05 Method and apparatus for reproducing blended colorants on an electronic display

Applications Claiming Priority (2)

Application Number Priority Date Filing Date Title
US85933992A 1992-03-27 1992-03-27
US07/859,339 1992-03-27

Related Child Applications (1)

Application Number Title Priority Date Filing Date
CA002444218A Division CA2444218A1 (en) 1992-03-27 1993-03-05 Method and apparatus for reproducing blended colorants on an electronic display

Publications (2)

Publication Number Publication Date
CA2091155A1 CA2091155A1 (en) 1993-09-28
CA2091155C true CA2091155C (en) 2004-01-06

Family

ID=25330668

Family Applications (1)

Application Number Title Priority Date Filing Date
CA002091155A Expired - Fee Related CA2091155C (en) 1992-03-27 1993-03-05 Method and apparatus for reproducing blended colorants on an electronic display

Country Status (6)

Country Link
US (2) US5375193A (en)
EP (2) EP0562745A3 (en)
JP (2) JPH06109544A (en)
AU (2) AU656057B2 (en)
CA (1) CA2091155C (en)
NZ (1) NZ247247A (en)

Families Citing this family (56)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JP3110746B2 (en) * 1990-10-09 2000-11-20 キヤノン株式会社 Image processing method
US5883632A (en) * 1992-05-04 1999-03-16 Hewlett-Packard Company Coordinating color produced by two devices--using a hue-controlled machine color space, or surface scaling
US5852444A (en) 1992-12-07 1998-12-22 Intel Corporation Application of video to graphics weighting factor to video image YUV to RGB color code conversion
US5877754A (en) * 1993-06-16 1999-03-02 Intel Corporation Process, apparatus, and system for color conversion of image signals
US6061153A (en) * 1993-12-09 2000-05-09 Canon Kabushiki Kaisha Image processing apparatus and method
US5493518A (en) * 1994-04-14 1996-02-20 Cone Mills Corporation Method and apparatus for simulating colored material
US6002498A (en) * 1994-06-15 1999-12-14 Konica Corporation Image processing method and image forming method
WO1996001467A1 (en) * 1994-07-01 1996-01-18 Apple Computer, Inc. Method and system for embedding a device profile into a document and extracting a device profile from a document in a color management system
US6147671A (en) * 1994-09-13 2000-11-14 Intel Corporation Temporally dissolved dithering
US5732205A (en) * 1994-12-30 1998-03-24 Intel Corporation Color conversion using 4.5 bit palette
US5900861A (en) * 1995-09-28 1999-05-04 Intel Corporation Table-driven color conversion using interleaved indices
US5673065A (en) * 1995-12-29 1997-09-30 Intel Corporation Color reduction and conversion using an ordinal lookup table
US6459425B1 (en) 1997-08-25 2002-10-01 Richard A. Holub System for automatic color calibration
US6043909A (en) 1996-02-26 2000-03-28 Imagicolor Corporation System for distributing and controlling color reproduction at multiple sites
US7728845B2 (en) 1996-02-26 2010-06-01 Rah Color Technologies Llc Color calibration of color image rendering devices
US5798767A (en) * 1996-03-15 1998-08-25 Rendition, Inc. Method and apparatus for performing color space conversion using blend logic
FR2749077B1 (en) * 1996-05-23 1999-08-06 Oreal COLOR MEASURING METHOD AND DEVICE
US5864345A (en) * 1996-05-28 1999-01-26 Intel Corporation Table-based color conversion to different RGB16 formats
US6278533B1 (en) * 1996-11-29 2001-08-21 Fuji Photo Film Co., Ltd. Method of processing image signal
US6509979B2 (en) * 1997-04-03 2003-01-21 Milliken & Company Printing method using inter-pixel blending on an absorbent substrate
US5933578A (en) * 1997-04-08 1999-08-03 Barco Graphics, N.V. Method and device for determining the color appearance of color overprints
US6232954B1 (en) * 1997-05-08 2001-05-15 Imation Corp. Arrangement for high-accuracy colorimetric characterization of display devices and method therefor
JP3525997B2 (en) * 1997-12-01 2004-05-10 富士通株式会社 Character recognition method
US6611249B1 (en) * 1998-07-22 2003-08-26 Silicon Graphics, Inc. System and method for providing a wide aspect ratio flat panel display monitor independent white-balance adjustment and gamma correction capabilities
GB2346964A (en) * 1999-01-29 2000-08-23 Richard May Method and apparatus for colour sample identification and display
JP3853105B2 (en) * 1999-05-24 2006-12-06 富士写真フイルム株式会社 Monochrome image display method for color monitor and image display apparatus used therefor
US6654150B1 (en) 1999-06-29 2003-11-25 Kodak Polychrome Graphics Colorimetric characterization of scanned media using spectral scanner and basis spectra models
US6650446B1 (en) * 1999-06-29 2003-11-18 Kodak Polychrome Graphics Colorimetric characterization of scanned media using spectral scanner and media models
EP1079606A3 (en) * 1999-08-11 2003-07-09 Canon Kabushiki Kaisha Color space adjustment for multiple different substrates
US7221373B2 (en) * 2000-04-04 2007-05-22 J & P Coats Limited Colour specification
GB2361158B (en) * 2000-04-04 2004-03-17 Coats Viyella Plc Colour specification
US7102648B1 (en) 2000-04-11 2006-09-05 Rah Color Technologies Llc Methods and apparatus for calibrating a color display
US6772151B1 (en) * 2000-06-16 2004-08-03 Polyone Corporation Color matching system and method
WO2002088452A1 (en) * 2001-05-01 2002-11-07 Milliken & Company Patterning system using a limited number of process colors
US8812968B2 (en) * 2001-05-03 2014-08-19 Milliken & Company Systems and methods for displaying and manipulating images of floor covering elements
US6806856B2 (en) * 2001-08-09 2004-10-19 Microsoft Corporation Reflective displays with color filter cross-talk compensation
US6704610B2 (en) * 2001-08-22 2004-03-09 Milliken & Company Reproduction of colored images on absorbent substrates using color blending techniques
US6792329B2 (en) * 2001-08-22 2004-09-14 Milliken & Company Construction of colored images on absorbent substrates using a computer-aided design system
US7070846B2 (en) * 2002-05-03 2006-07-04 Milliken & Company Carpet constructions, systems, and methods
JP4013657B2 (en) * 2002-06-03 2007-11-28 セイコーエプソン株式会社 Image display device, image display method, and computer-readable recording medium on which image display program is recorded
ATE464544T1 (en) * 2002-12-12 2010-04-15 Koninkl Philips Electronics Nv TRANSFORMATION STRUCTURES FOR APPROACHING COLOR MATCHING FUNCTIONS
CN1736110A (en) * 2003-01-03 2006-02-15 汤姆森特许公司 System for maintaining white uniformity in a displayed video image by predicting and compensating for display register changes
DE10335145A1 (en) * 2003-07-31 2005-02-17 Giesecke & Devrient Gmbh Procedure for checking and selecting inks
JP4551068B2 (en) * 2003-08-19 2010-09-22 関西ペイント株式会社 Approximate recipe search system
US7940393B2 (en) * 2004-05-04 2011-05-10 Advanced Vision Technology (Avt) Ltd. Method and system for approximating the spectrum of a plurality of color samples
CA2492961C (en) * 2004-12-23 2010-03-23 Chris Frosztega Colour coatings blender apparatus, production of colour coatings gradients and application methods and uses therefor
KR100710302B1 (en) * 2005-05-17 2007-04-23 엘지전자 주식회사 Apparatus and method for compensating color of video signal in a display device
US20070059844A1 (en) * 2005-09-12 2007-03-15 Techmer Pm, Llc Non-metameric color matching system and method
US20080007574A1 (en) * 2006-07-05 2008-01-10 Fujifilm Corporation Image display method
JP5029187B2 (en) * 2007-07-20 2012-09-19 株式会社ニコン Color coordinate conversion device, imaging device, color coordinate conversion program, and color coordinate conversion method
WO2010131499A1 (en) * 2009-05-15 2010-11-18 シャープ株式会社 Image processing device and image processing method
US8890884B2 (en) * 2009-11-20 2014-11-18 Sharp Kabushiki Kaisha Image processing device converting a color represented by inputted data into a color within a color reproduction range of a predetermined output device and image processing method thereof
KR101803571B1 (en) * 2011-06-17 2017-11-30 엘지디스플레이 주식회사 Stereoscopic Image Display Device and Driving Method thereof
EP3767257B1 (en) * 2018-03-16 2023-09-20 Konica Minolta, Inc. Color tone quantification device for glossy color, color tone measurement device for glossy color and color tone quantification method for glossy color
CN109637441B (en) * 2019-01-08 2020-09-11 武汉精立电子技术有限公司 Module Gamma correction method based on Kalman filtering
WO2020147580A1 (en) * 2019-01-18 2020-07-23 欧普照明股份有限公司 Light source parameter measurement method and apparatus, illumination system and terminal device

Family Cites Families (18)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4159892A (en) * 1977-08-30 1979-07-03 World Carpets, Inc. Method of print dyeing textile materials from a photograph and products made therefrom
US4188216A (en) * 1977-08-30 1980-02-12 World Carpets, Inc. Method of print dyeing textile materials
US4232366A (en) * 1978-10-25 1980-11-04 Digital Equipment Corporation Bus for a data processing system with overlapped sequences
NZ202895A (en) * 1982-12-22 1987-09-30 Univ Auckland Color discriminator
US4635078A (en) * 1983-04-28 1987-01-06 Canon Kabushiki Kaisha Intermediate gradient image producing method
ATE27362T1 (en) * 1983-12-14 1987-06-15 Hell Rudolf Dr Ing Gmbh METHOD AND CIRCUIT ARRANGEMENT FOR DETECTING HUES AND COLOURS.
US4823108A (en) * 1984-05-02 1989-04-18 Quarterdeck Office Systems Display system and memory architecture and method for displaying images in windows on a video display
JPS6163893A (en) * 1984-09-06 1986-04-02 株式会社日立製作所 Display of false halftone image of display unit
US4654721A (en) * 1985-04-12 1987-03-31 International Business Machines Corporation System for reproducing multi-level digital images on a bi-level printer of fixed dot size
US4758897A (en) * 1985-04-30 1988-07-19 Konishiroku Photo Industry Co., Ltd. Method and apparatus for estimating halftone image from binary image
US4670780A (en) * 1985-05-28 1987-06-02 Tektronix, Inc. Method of matching hardcopy colors to video display colors in which unreachable video display colors are converted into reachable hardcopy colors in a mixture-single-white (MSW) color space
US4721943A (en) * 1985-10-11 1988-01-26 Tektronix, Inc. Digital-to-analog converter for video application
US4807182A (en) * 1986-03-12 1989-02-21 Advanced Software, Inc. Apparatus and method for comparing data groups
US4680645A (en) * 1986-08-25 1987-07-14 Hewlett-Packard Company Method for rendering gray scale images with variable dot sizes
JPH0691612B2 (en) * 1987-03-11 1994-11-14 株式会社ヤマトヤ商会 Image gradation conversion method
US4833623A (en) * 1987-07-21 1989-05-23 Burlington Industries, Inc. Orifice plate inspection apparatus and method
US4875032A (en) * 1987-10-26 1989-10-17 Mcmanus Paul A Method and apparatus for processing colorimetric parameters of a color sample
US5150199A (en) * 1990-01-02 1992-09-22 Megatronics, Inc. Method for correlating color measuring scales

Also Published As

Publication number Publication date
CA2091155A1 (en) 1993-09-28
US5428720A (en) 1995-06-27
AU670012B2 (en) 1996-06-27
US5375193A (en) 1994-12-20
JP2003202267A (en) 2003-07-18
JPH06109544A (en) 1994-04-19
EP0562745A3 (en) 1994-07-13
NZ247247A (en) 1995-07-26
AU8022494A (en) 1995-02-09
EP0762093A3 (en) 1997-07-30
EP0762093A2 (en) 1997-03-12
AU3396693A (en) 1993-10-07
AU656057B2 (en) 1995-01-19
EP0562745A2 (en) 1993-09-29

Similar Documents

Publication Publication Date Title
CA2091155C (en) Method and apparatus for reproducing blended colorants on an electronic display
KR100840165B1 (en) Method for retrieving approximate-color of metallic paint color at high speed
US6480299B1 (en) Color printer characterization using optimization theory and neural networks
US7227586B2 (en) Color signal processing
US5798943A (en) Apparatus and process for a digital swatchbook
KR100255408B1 (en) Color reproduction method
JP3183769B2 (en) How to reproduce color prints
US7705857B2 (en) Method and apparatus for characterizing and correcting for hue shifts in saturated colors
EP1174694A9 (en) Method for evaluating reproducibility of toning sample by ccm
EP3944093A1 (en) Paint color search device
EP1812887A2 (en) Computer-implemented color adjustment method and program using multi-dimensional vector analysis
Stone Representing colors as three numbers [color graphics]
Rougeron et al. Color fidelity in computer graphics: A survey
Nayatani et al. Proposal of an abridged color‐appearance model CIECAT94LAB and its field trials
US20060066097A1 (en) Method of color specification and, using the same, color column structure and color chart
CA2444218A1 (en) Method and apparatus for reproducing blended colorants on an electronic display
US9135886B2 (en) Colour calibration of electronic display screens
Hawkyard et al. Colour in textile computer‐aided design systems
Kucuk et al. Comparison of Regression Methods and Neural Networks for Colour Corrections
Lovetskiy et al. Numerical modeling of color perception of optical radiation
Mirzaei et al. Gaussian-based hue descriptors
Wang et al. Color Graphics in the Service of Light-Source Visualization and Design
Sobagaki et al. On the field trials of CIECAM97s and its model structure
Gutmann et al. Displaying colors of specified chrominance on a color graphics display
Raitoharju et al. A statistical model of tristimulus measurements within and between OLED displays

Legal Events

Date Code Title Description
EEER Examination request
MKLA Lapsed