The invention relates generally to the field of image processing and more particularly to image processing systems which adjust the brightness characteristics of a digital image.
Many digital imaging systems include three main components: a mechanism for generating the source digital imagery, a mechanism for processing the digital image data, and a mechanism for visualizing the imagery. As such, many digital imaging systems employ more than one image processing method, or algorithm, designed to enhance the visual quality of the final rendered output. In particular, image processing methods of interest are methods for adjusting the overall balance, or brightness of digital images.
In the journal article Automatic Color Printing Techniques published in Image Technology, April/May 1969,the authors Hughes and Bowker describe an automatic method of printing color negative film onto photographic paper. In this article, Hughes et al. compare their method to the predominant method of the time, namely large area transmission density (LATD) The LATD method, which involves sensing the color of the overall film negative, is described as failing to accurately predict the color balance for natural scenes which are dominated by a single color The LATD measurements are reliable only when the scene is composed of a random sampling of red, green and blue objects. The new method described by Hughes et al. involved the steps of scanning the film negative with a red, green, and blue sensitive line scanner capable of resolving reasonable spatial detail, developing two color-difference signals by subtracting the green signal from the red signal and the blue signal from the red signal, forming a spatial derivative of the color-difference signals, calculating an average color balance for the film negative by rejecting image region not exhibiting color activity, and exposing the film negative onto photographic paper using the calculated color balance to adjust the overall color of the print. The differentiation operation employed by Hughes and Bowker involves the calculation of subtracting adjacent signal values i.e. forming a gradient signal. Hughes and Bowker identified a link between regions of images which exhibit spatial activity and the likelihood of those image regions as being good estimates of color balance.
The minimum total variance (MTV) filter and the median absolute difference (MAD) filter described by P. A. Dondes and A. Rosenfeld in the journal article Pixel Classification Based on Gray Level and Local “Busyness” in IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. PAMI-4, No 1, pp. 79-84, 1982,is an example of a non-linear digital image processing filter which produces a metric, or value, relating to spatial activity. In this article, Dondes and Rosenfeld disclose two spatial activity algorithms based on calculating the vertical and horizontal gradient signals, or pixel differences, of a digital image. For a 3 by 3 pixel region centered about a pixel of interest e,
Dinstein et al. described the MAXDIF filter as a spatial activity metric in their journal article Fast Discrimination Between Homogeneous and Textured Regions published in Seventh International Conference on Pattern Recognition, Montreal, Canada, Jul. 30-Aug. 2, 1984,pp. 361-363. The MAXDIF filter involves calculating the minimum and maximum pixel value within local neighborhood of pixels about a pixel of interest. For a 3 by 3 pixel region centered about a pixel of interest e,
The MAXDIF filter described by Dinstein et al. is calculated for each pixel in the digital image thus producing a digital image whose value at a given pixel location is a measure of the spatial activity of the original image about the same pixel location. This filter was intended as digital image processing pixel classification filter.
In U.S. Pat. No. 5,016,043 issued May 14, 1991, Kraft et al. disclose a method of color balancing and brightness balancing for photographic optical printers. In the disclosure, photographic film negative originals are scanned photoelectrically by regions and three color densities are determined for each scanning region. Each scanning region has multiple photoelectric response values produced with a high resolution scanning system. A detail contrast parameter describing the detail contrast in the scanning region is calculated by finding the maximum and minimum values taken from the multiple photoelectric response values. The detail contrast parameters for each of the scanning regions are evaluated together with the color densities of the scanning regions for the determination of the exposure light quantities. These exposure values are used to control the amount of light passing through the photographic film negative onto photographic paper and relate to the average density of the photographic film sample. In particular, in the correction of densities, scanning regions with higher detail contrasts are considered stronger than those with lower density contrasts, while color corrections are carried out in exactly the opposite manner.
The optical printing exposure method disclosed by Kraft et al. in U.S. Pat. No. 5,016,043 uses the same principle of spatial activity described by Hughes and Bowker for determining color balance. Kraft et. al extends the concept to include the determination of brightness balance based on spatial activity. While the method disclosed by Kraft et al. is useful for adjusting the overall brightness and color balance of an optical print, the technology cannot be used directly for adjusting the brightness tone of a digital image. In the method described by Kraft et al. only a low resolution sampled version of photographic film negative is ever available for computation. Thus no digital image is formed by the method disclosed Furthermore, no method for adjusting the brightness tone of digital image is mentioned. However, the computed average density of the photographic film sample does relate to the desired overall brightness tone adjustment of a digital image.
In U.S. Pat. No. 4,984,013 issued Jan. 8, 1991, Terashita describes a method of calculating the amount of exposing light for a color photographic film negative involving the steps scanning the original negative in red, green, and blue color sensitivities photoelectrically, calculating color density difference values for the red, green and blue signals of adjacent pixel values, comparing the color density difference values to a threshold value, classifying the pixels as either belonging to subject or background regions based on color difference values, calculating a printing exposure based on a statistical quantity sampled from the subject region of pixels. Alternately, the method describes the use of a color chrominance signal for forming the color density difference values. The method described by Terashita builds on the principles described by Hughes and Bowker by extending the idea of using spatial derivatives to calculate brightness balance for printing exposure control. However, the method described by Terashita does not teach a method for adjusting the brightness of a digital image Furthermore, the formulation of the pixel classification on the basis of color and/or chrominance signals rather than luminance signals makes the method more susceptible to noise.
U.S. Pat. No. 5,724,456 issued Mar. 3, 1998 to Boyack et al., describes a method for processing a digital image signal designed to adjust the tonal brightness and contrast characteristics of the digital image In this method, the luminance values versus a tonal reproduction capability of a destination application are used. The system includes a device for partitioning the image into blocks, then combining certain blocks into sectors. An average luminance block value is determined for each block and a difference is determined between the maximum and minimum average luminance block values for each sector. If the difference exceeds a predetermined threshold value, then the sector is labeled as an active sector and an average luminance sector value is obtained from maximum and minimum average luminance block values. All weighted counts of active sectors of the image are plotted versus the average luminance sector values in a histogram, then the histogram is shifted via some predetermined criterion so that the average luminance sector values of interest will fall within a destination window corresponding to the tonal reproduction capability of a destination application. The method described in this patent adjusts digital image tone scale characteristics, i.e. the brightness of different image regions is affected differently. The method taught in U.S. Pat. No. 5,724,456 does not adjust the overall digital image brightness.
U.S. Pat. No. 4,394,078 issued Jul. 19, 1983 to Terashita, describes an exposure control method for a camera based on the scene brightness measured by the use of a number of light measuring elements located at positions to receive light from the scene. The light receiving area is divided into several zones. In each of the zones, at least one light measuring element is provided to measure the brightness of the scene in each zone and is used to give the maximum or minimum brightness in each zone. Exposure is controlled based on a weighted mean value. Also described is an exposure control method based on another brightness calculation involving the mean value of the outputs of all the light measuring elements.
The method taught by J. Hughes and J. K. Bowker forms the basis of methods taught by Kraft et al. and Terashita, i e formulating a gradient signal (or pixel difference signal) as a measure of spatial activity, comparing the gradient signal to a predetermined threshold to reject some portions of the image (classify the image pixels), and balancing the image by deriving a numerical average of the signals from the selected portion of the image. The methods described by Hughes et al., Kraft et al, and Terashita all relate to optical printer exposure control and do not teach a method of setting camera exposure or adjusting the brightness of a digital image. The methods taught by Kraft et al, and Terashita create binary masks which can produce statistically unstable results by virtue of the on/off nature of the inclusion/exclusion logic. Furthermore, the spatial activity measure used by Terashita is not isotropic (sensed equally in all directions) and therefor less robust than the isotropic measures of spatial activity described by Dondes et al. What is needed is robust measure of spatial activity used for adjusting the brightness of a digital image, setting the exposure for a photographic camera, and optical printer.
The need is met according to the present invention by providing a method of calculating a brightness balance value for a digital image including a plurality of pixels, comprising the steps of: calculating a spatial activity measure in a plurality of regions of the digital image, each region including a plurality of pixels; generating a weighting factor for each of the local neighborhoods of pixels as a function of the spatial activity of the local neighborhoods of pixels, the weighting factors having more than two possible values; and applying the weighting factors to the pixels of the digital image to produce the brightness balance value.
The present invention overcomes the shortcomings of the prior art by using a measure of spatial activity as the basis for assigning the relative importance of image pixel values to the overall desired brightness characteristics. The luminance signal derived from the individual red, green, and blue signals provides an extra degree of robustness due to the fact that the luminance signal more directly relates to image brightness. Some methods taught in the prior art require an image segmentation process which can lead to statistical sensitivity to the chosen threshold value for segmentation. The present invention overcomes this deficiency by using image pixel values regardless of their numerical value and assigning a continuous weighting value for the relative importance Another improvement of the present invention over the prior art is the use of a uni-directional gradient operation and/or the horizontal and vertical gradient operation for the measure of spatial activity which incorporates a more robust measure of spatial activity than the causal measure methods previously disclosed.
The present invention has the advantage that the brightness balance of a digital image or a print made from an optical printer can be achieved robustly.
A digital image is comprised of a one or more digital image channels. Each digital image channel is comprised of a two-dimensional array of pixels. Each pixel value relates to the amount of light received by an imaging capture device corresponding to the geometrical domain of the pixel. For color imaging applications, a digital image will typically consist of red, green, and blue digital image channels. Other configurations are also practiced, e.g. cyan, magenta, and yellow digital image channels. For monochrome applications, the digital image consists of one digital image channel. Motion imaging applications can be thought of as a time sequence of digital images. Those skilled in the art will recognize that the present invention can be applied to, but is not limited to, a digital image for any of the above mentioned applications.
Although the present invention describes a digital image channel as a two dimensional array of pixel values arranged by rows and columns, those skilled in the art will recognize that the present invention can be applied to mosaic (non rectilinear) arrays with equal effect. Those skilled in the art will also recognize that although the present invention describes replacing original pixel values with brightness adjusted pixel values, it is also trivial to form a new digital image with the brightness adjusted pixel values and retain the original pixel values.
As used herein, the term “paxel region” refers to a defined group of pixels The paxel value is the average of the pixel values in the paxel region. Paxelization is the process of dividing an image into paxel regions and producing a paxel value for each paxel region. A paxelized digital image is a digital image produced from another digital image by the process of paxelization.
The present invention may be implemented in computer hardware. Referring to
Multiple capture devices 10 are shown illustrating that the present invention may be used for digital images derived from a variety of imaging devices. For example,
The present invention may be implemented with multiple computers connected via a computer network such as but not limited to, the Internet accessed via the World Wide Web. As part of the digital image processing procedures involved in the practice of the present invention, two central elements are embodied: 1) the calculation of a brightness balance value derived from the pixel values contained in the source digital image, and 2) the transformation of the source digital image using the brightness balance value to adjust its brightness. One or both of these central elements may be achieved in a single computer, however, it is possible for the calculation of the brightness balance value and the transformation based on this value to be performed on different computers.
The diagram illustrated in
Although two computer systems are shown in
The brightness balance value is an example of image meta-data, i.e. a piece of non-pixel information related to a digital image. Image meta-data may be used for such purposes as, but not limited to, conveying information about how the digital image was captured, adding context to the meaning of the digital image such as the photographer's annotation, or adding analysis information about the digital image. The present invention transmits the brightness balance value as a piece of image meta-data over a computer network to enable a different computer system to use the image meta-data to adjust the brightness of the digital image
The present invention may be implemented in a photographic camera system as a component for exposure control. Examples of a photographic camera system include, but is not limited to, a photographic film camera, a digital still frame camera, a video camera, a digital video camera, and a motion picture camera. Referring to
The scene light distribution is focused by the lens 12 onto the photosensitive recording device 14 forming a focal plane image of the original scene. The photosensitive recording device 14 receives the light and records the intensity of the imaged light distribution. The photosensitive recording device 14 may be, but is not limited to, a photographic film or a solid state CCD imaging electronic device. The amount of light received by the photosensitive recording device 14 is regulated by the aperture device 11 and the time integration device 13. The aperture device 11 regulates the amount of light by varying the effective diameter of the lighting passing portion of the lens 12. The time integration device 13 regulates the amount of light received by varying the length of time the focused light remains on the photosensitive recording device 14. For a photographic film camera, the time integration device 13 may be a shutter which opens during the imaging operation and remains closed otherwise. The exposure control device 16 regulates both the aperture device 11 and the time integration device 13. For a photographic film camera system, the photosensitive monitoring device 15 may be an electronic photosensitive device with a plurality of photosensitive elements with a reduced spatial resolution sensitivity compared with the photographic film. Also included in the photosensitive monitoring device 15 is a means for converting the sensed electrical response of the photosensitive elements into digital pixel values. For a digital still frame camera system, the photosensitive monitoring device 15 may be a separate device, similar to the photographic film camera system, or may be the photosensitive recording device 14 itself. For either system, the photosensitive monitoring device 15 generates a source digital image which is received by the digital image processor 20.
The exposure control device 16 receives a brightness balance value from the digital image processor 20. The photographic camera system must be calibrated in order for the exposure control device 16 to properly interpret the brightness balance value. The exposure control device have knowledge of the speed value Sv of the photosensitive recording device 14. The exposure control device 16 regulates the diameter of the aperture device 11 and the length of exposure time of the time integration device 14 in accordance with the following mathematical relationship:
Av+Tv=Bv+Sv.
where the aperture value Av is given by the equation
Av=log2(Fn2)
where the Fn term is the photographic F number of the lens-aperture, the time value Tv is given by the equation:
Tv=log2(τ)
where the τ term is the regulated length of exposure time in seconds of the time integration device 13, and the term Sv is the speed value given by the equation:
Sv=log2(πs)
where s is the ISO photographic speed rating of the photosensitive recording device 14. The brightness value Bv is given by the formula:
Bv=C1b+C0
where C1 and C0 are numerical calibration constants and b represent the brightness balance value received by the digital image processor 20.
The exposure control device may have more than one mode of operating, however, two modes are the most useful. In the aperture Av mode, the exposure control device 16 allows the operator of the camera to set the aperture value Av while the exposure control device 16 the sets the time value Tv by the equation:
Tv=Bv+Sv−Av.
In the time Tv mode, the exposure control device 16 allows the operator of the camera to set the time value Tv while the exposure control device 16 the sets the aperture value Av by the equation:
Av=Bv+Sv−Tv.
The present invention may be used with complex relationships for determining the camera exposure.
The present invention may be implemented in computer hardware. Referring to
The exposure control device 16 must be calibrated for the intensity of the lamp house 34 and the photo sensitivity of the photographic receiver 38. The mathematical relationship for the length of time t required for a proper printing exposure is given by
t=D110(D
where D1, D2, D3, and D0 are numerical calibration constants, and b is the brightness balance value.
The digital image processor 20 shown in
The cascaded chain of image processing modules employed by the present invention is shown in
A characteristic of the digital image produced by a capture device 10 which can impact the effectiveness of the present invention is the color space metric associated with the capture devices which produce color digital images. Typically the capture device 10 incorporates three color spectral filters which determine the relative amounts of colored light received by the photosensitive transducer elements. Depending on the characteristics of the spectral filters, better results may be achieved with the present invention if a color transform is applied to the digital image preceding the application of the brightness tone scale module 100. Although the application of a color transform is not required to practice the present invention, optimal results may be achieved if a color transform is applied based on the spectral characteristics of the input and/or output devices.
The color transform method employed by the present invention is a 3 by 4 matrix transformation. This transformation generates new color pixel values as linear combinations of the input color pixel values. The input color digital image consists of red, green, and blue digital image channels. Each digital image channel contains the same number of pixels. Let R1j, G1j, and B1j refer to the pixel values corresponding to the red, green, and blue digital image channels located at the ith row and jth column. Let R′1j, G′1j, and B′1j refer to the transformed pixel values of the output color digital image. The 3 by 4 matrix transformation relating the input and output pixel values is as follows:
R′1j=τ11R1j+τ12G1j+τ13B1j+τ10
G′1j=τ21R1j+τ22G1j+τ23B1j+τ20
B′1j=τ31R1j+τ32G1j+τ33B1j+τ30
where the τmn terms are the coefficients of the 3 by 4 matrix transformation. These twelve numbers are specific to the spectral characteristics of the capture device 10 and the intended image output device 30 shown in
Different methods exist for applying a color transform to a digital image, e.g a 3-dimensional LUT may achieve even better results albeit at greater computational cost. If the τ10, τ20 and τ30 values are set to zero a simplified 3 by 3 matrix equation results. For the purposes of the present invention, a 3 by 3 matrix transform, 3 by 4 matrix transform, and a 3-dimensional LUT will all be considered examples of a color transform.
A characteristic of the digital image produced by a capture device 10 which can impact the effectiveness of the present invention is the code value domain associated with capture device which produce digital images. Typically the capture device 10 incorporates a photosensitive transducer element which converts the imaged light into an analog electrical signal. An analog-to-digital converter device is then used to transform the analog electrical signal into a set of digital code values These digital code values constitute the numerical pixel values of the output digital image produced by the capture device 10. The code value domain characteristic of a capture device 10 describes the mathematical relationship between the output digital code values and the input intensity of received light.
Many photosensitive transducer elements have a linear characteristic response, i.e. the electrical analog signal produced is linearly proportional to the intensity of received light Many analog-to-digital converter devices have a linear characteristic response, i.e. the digital code values produced are linearly proportional to the intensity of received electrical analog signal. If a linear transducer element and a linear analog-to-digital converter are employed by a capture device, the resulting output code values will have a linear relationship with the intensity of the received light. Thus the digital images produced by capture devices which exhibit this linear relationship have numerical pixel values which have a linear relationship with the original intensity of light. Such digital images will be termed to have a linear code value domain property.
The present invention may be applied to digital images which have a linear code value domain property. However, better results are obtained with the present invention if the input digital image has a logarithmic code value domain property, i e. the numerical pixel values have a logarithmic relationship with the original intensity of light. The logarithm transform module 26 shown in
p′1j=LUT[p1j]
where the [] notation refers to the LUT indexing operation, i.e. the output pixel value p′1j is given by the numerical value stored in the LUT at the index given by the input pixel value p1j. The values stored in the LUT may be computed by the following mathematical relationship:
LUT[k]=Lo+L1 log(k+ko)
where the numerical constants Lo and L1 are used to determine the scale the output pixel values and the constant ko is used to avoid calculating the logarithm of zero.
The mathematical operation performed by the logarithm transform module 26 is an example of single valued function transform, i.e. each input value has a single corresponding output value. This operation may be implemented as a succession of mathematical operations (add, log, multiple, add) in computer hardware or software. However, for large digital images the same operation is more computationally efficient implemented as a LUT transformation. For the purposes of the present invention, the LUT implementation and the succession of mathematical operations implementation will be referred to as logarithmic transforms.
The brightness tone scale module 100 depicted in
Referring to
The analysis phase of the tone brightness module depicted in
L1j=0.333R1j+0.333G1j+0.333B1j
GM1j=−0.25R1j+0.50G1j−0.25B1j
IL1j=−0.50R1j+0.50B1j
Those skilled in the art will recognize that the exact numbers used for coefficients in the luminance/chrominance matrix transformation may be altered and still yield substantially the same effect. An alternative embodiment of the present invention uses the following mathematical formulation:
L1j=0.375R1j+0.50G1j+0.125B1j
GM1j=−0.25R1j+0.50G1j−0.25B1j
IL1j=−0.50R1j+0.50B1j
The preferred embodiment of the present invention of the brightness tone scale module 100 is shown in detail in
Referring to
Many methods of calculating a pixel value from the pixel values contained in a paxel region exist Pixel averaging is the method used by the preferred embodiment of the present invention due to its efficient computational design. Let p1j represent the pixel values corresponding to a paxel region, and qmn the calculated pixel value located at the mth row and nth column of the paxelized digital image channel. Then the value of p1j s given by
where N represents the number of pixels contained in the paxel region. For the example illustrated in
An alternative embodiment of the present invention of the brightness tone scale module 100 is shown in detail in
The brightness transform module 130 is shown in more detail in
The reference gray value ρ is a numerical constant which depends on the calibration procedure employed by the digital imaging system. It represents the pixel value corresponding to the preferred brightness of a digital image which needs no brightness adjustment. Thus digital images processed with the present invention which have a calculated brightness balance value ψ equal to the reference gray value ρ will need no brightness adjustment. The best method of determining the reference gray value ρ involves adjusting the output device controls such that a digital image produced with a properly exposed capture device produces a preferred or optimal rendition.
The numerical difference between the brightness balance value ψ and the reference gray value p represents the change in brightness or amount of brightness adjustment required. This quantity, termed the brightness shift value δ, is given by the formula:
δ=ρ−ψ.
The mathematical formula relating the source digital image channel pixel values p1j to the output balanced digital image pixel values p′1j is given by:
p′1j=p1j+δ.
The brightness adjustment performed by the combination of the tone scale function generator 160 and the tone scale applicator 170 is an example of a single valued function transform, i.e. each input value has a single corresponding output value. This operation may be implemented as an addition or subtraction operation in computer hardware or software However, for large digital images the same operation is more computationally efficient implemented as a LUT transformation. The brightness adjustment LUT may be calculated as
LUT[k]=k+δ
where k assumes values that span the full range of pixel values. The tone scale applicator 170 applies the LUT to the pixel values of the digital image channel as
p′1j=LUT[p1j]
where the [] notation refers to the LUT indexing operation, i.e. the output pixel value p′1j is given by the numerical value stored in the LUT at the index given by the input pixel value p1j. The LUT produced by the tone scale function generator 160 constitutes an implementation of a tone scale function. Those skilled in the art will recognize that the present invention is not limited to just linear brightness tone scale functions but may used with more complicated tone scale functions which alter both the brightness and contrast characteristics of a digital image simultaneously, i.e. non-linear tone scale functions.
Referring to
The diagram shown in
ψ=α0+λ1−λ1o
where λ1 is the brightness prediction value calculated by the brightness prediction module 200, λ1o is a numerical constant termed a brightness prediction value offset, and α0 is a numerical constant termed a brightness balance value offset.
The brightness prediction value offset λ1o is a numerical constant which represents the difference between the reference gray value ρ and the expected value of λ1 produced by the brightness prediction module 200. The best method for determining the value of λ1o involves a calibration procedure of capturing a database of digital images, processing the database of digital images and making hard copy print renditions of the calculated digital images, having a set of human image quality judges optimize the print renditions of the digital images, and setting the value of λ1o based on the difference between the optimized print renditions and the calculated print renditions.
Referring to
With the value of λ1o set as per the above equation and the brightness balance value offset α0 set at zero, the system will be calibrated to the brightness preference of the average image quality judge. The actual value of λ1o depends on the value of the reference gray value ρ and the preference of the set of human image quality judges.
The brightness balance value offset α0 represents a brightness preference which can be tuned for different imaging applications or for personal preference. With the calibration method described above for the brightness prediction value offset λ1o, the value of brightness balance value offset α0 is set to zero. However, if the operator of a digital imaging system as shown in
Referring to
ψ=α0+Σ1α1(λ1−λ1o)
where λ1 represents the brightness prediction value of the ith brightness prediction module 200, λ1o represents the corresponding brightness prediction value offset α1 represents a brightness prediction coefficient corresponding the ith brightness prediction value λ1and α0 represents the brightness balance value offset. For this alternative embodiment of the present invention, the values of the brightness prediction value offsets λ1o are determined by the same calibration method used by the preferred embodiment of the present invention. Each brightness prediction value offset is determined with the corresponding brightness prediction coefficient set to one and the other brightness prediction coefficients set to zero.
The values of the brightness prediction coefficients α1 are determined by linear regression. For the set of N test images a set of brightness prediction values λ1 are generated denoted by λ1, . . . , λN1. Represented as a two dimensional array of values, the set of brightness prediction values λ11, . . . , λN1 forms a N by M brightness prediction matrix [λ]. The set of aim balance values A1, . . . , AN forms an N by 1 matrix [A]. For a set of M brightness prediction modules 200, the corresponding M brightness prediction coefficients α1, . . . , αM form an M by 1 matrix [α]. Thus the matrix equation relating the aim balance values, brightness prediction values, and the brightness prediction coefficients s given by
[A]=[λ][α].
where the matrices [A] and [λ] are known and the matrix [α] is unknown. The value of the matrix [α] may be solved by the following mathematical formula
[α]=[[λ]t[λ]]−1[λ]t[A]
were the [λ] matrix elements are given by
λ11λ12 . . . λ1M
λ11λ12 . . . λ1M
. . .
λN1λN2 λNM
where the element λk1 represents the of brightness prediction value for the kth test image and the ith brightness prediction module 200 and the []t notation denotes the matrix transpose operation and the []−1 notation denotes the matrix inverse operation. The values of the brightness prediction coefficients αi, . . . , αM are given by the elements of the [α] matrix. The brightness balance value offset α0 is not affected by the linear regression. The value of the brightness balance value offset α0 may be selected by the system operator.
A second alternative embodiment of the present invention uses the following mathematical formula for calculating the brightness balance value ψ by the brightness prediction generator 205
ψ=α0+Σ1α1λ1
were the [λ] matrix elements are given by
1 λ11λ12 . . . λ1M
1 λ11λ12 . . . λNM
. . .
1 λN1λN2 .λNM
where the element λk1 represents the of brightness prediction value for the kth test image and the ith brightness prediction module 200, α1 represents a brightness prediction coefficient corresponding the ith brightness prediction value λ1 and α0 represents the brightness balance value offset.
The values of the brightness prediction coefficients α1 are determined by the linear regression equation given by
[A]=[λ][α].
where the matrices [A] and [λ] are known and the matrix [α] is unknown. The value of the matrix [α] may be solved by the following mathematical formula
[α]=[[λ]f[λ]]−1[λ]t[A]
where the []t notation denotes the matrix transpose operation and the []−1 notation denotes the matrix inverse operation. The values of the brightness prediction coefficients α1, . . . , αM are given by the elements of the [α] matrix. The brightness balance value offset α0 is set by the linear regression. The value of the brightness balance value offset α0 may be selected by the system operator.
A spatial weighting mask is a two dimensional array of numerical weighting factors. The numerical weighting factors of a spatial weighting mask relate to the relative importance of pixel location. Spatial weighting masks are used in conjunction with a digital image channel to weight the relative importance of the pixels values of the digital image channel.
Referring to
ξ1j=K+(1−K)e−((i−i
where ξ1j represents the Gaussian weighting factor value located at the ith row and jth column, io and jo represent the vertical and horizontal indices of the Gaussian function center, σ1 and σj represent the vertical and horizontal Gaussian standard deviation values, and K is numerical constant which regulates the relative importance of the center pixel locations to perimeter pixel locations.
The placement of the Gaussian function center depends on the orientation of the corresponding digital image being processed. If the orientation is unknown, the numerical constants ic is set to one half the vertical dimension of the Gaussian spatial weighting mask. Similarly, the numerical constants jo is set to one half the horizontal dimension of the Gaussian spatial weighting mask. Thus for the example digital image shown in
The preferred embodiment of the present invention uses a value of 0.25 for the parameter K. This achieves approximately a three to one weighting ratio for the center pixels versus the perimeter pixels. Experimentation with many digital images has shown this value to work well. The value of σ1 and σj have also been empirically set through experimentation with large numbers of digital images. Although the present invention works well with a range of values for σ1 and σj, the best results have been achieved with σ1 and σj set to 25 percent of the respective Gaussian spatial weighting mask dimension. For the example dimensions of 24 rows and 36 columns, the value of σ1 is set to 6.0 and the value of σj is set to 9.0.
g1, g2, . . . , gn
is calculated using the values of pixels located in a small local neighborhood of pixels about the pixel of interest. The preferred embodiment of the present invention uses a 3 by 3 local neighborhood of pixels. For the purposes of the present invention, a gradient pixel value will be defined mathematically as the absolute value of the difference between two pixels. The present invention uses pixel data characterized by a logarithmic code value domain property. If the present invention is implemented with pixel data characterized by a linear code value domain property, the definition of a gradient pixel value will be given by the ratio of two pixel values.
The gradient pixel value calculation is a measure of spatial activity in that the calculation relates to the pixel modulation, or pixel value variability within a small local region of pixels about a pixel of interest. Examples of other spatial activity measures include but are not limited to the standard deviation and mean deviation calculated for pixels in a neighborhood about a pixel of interest.
The set of gradient pixel values is generated by calculating the absolute value of the pixel differences between the value of pixel of interest and the individual pixels in the local neighborhood of pixels For a 3 by 3 pixel region centered about a pixel of interest e,
a b c
d e f
g h i
8 gradient pixel values are calculated since there are 8 pixels in a 3 by 3 pixel region excluding the pixel of interest. Thus the mathematical formula for the individual gradient pixel values is given by
g1=|a−e| g2=|b−e| g3=|c−e| g4=|d−e|
g5=|f−e| g6=|g−e| g7=|h−e| g8=|i−e|
where e represents the value of the pixel p1j located at the ith row and jth column. For a 5 by 5 neighborhood of pixels 24 gradient pixel values would be calculated. Since the calculation of the set of gradient pixel values requires two pixels to form a difference, the pixels of interest lying on the perimeter of the paxelized luminance digital image channel will generate fewer numbers of gradient pixel values in the set of gradient pixel values.
An alternative embodiment of the present invention forms the set of gradient pixel values by calculating the horizontal and vertical pixel differences of adjacent pixels within the pre-defined local neighborhood of pixels. For a 3 by 3 local neighborhood of pixels 6 horizontal and 6 vertical gradient pixel values are calculated for a total of 12 gradient pixel values Thus the mathematical formulas for the individual vertical gradient pixel values are given by
g1=|a−d| g2=|d−g| g3=|b−e|
g4=|e−h| g5=|c−f| g6=|f−i|
and the horizontal gradient pixel values are given by
g7=|a−b| g8=|b−c| g9=|d−e|
g10=|e−f| g11=|g−h| g12−|h−i|
The set of gradient pixel values is received by the minimum detector 220 which sorts the set of gradient pixel values in rank order, i.e. either in ascending or descending order. Once the set of gradient pixel values is sorted a rank order statistic is obtained from the set, e.g. the minimum, maximum, or median. The preferred embodiment of the present invention uses the minimum rank order statistic. The rank order statistical quantity will be termed the rank order gradient pixel value Gro denoted by
Gro=MIN(g1,g2, . . . , gn).
The minimum and maximum rank order statistics are special cases which may be obtained without actually having to sort the set of gradient pixel values.
An alternative embodiment of the present invention forms two gradient pixel values by calculating the sums of the horizontal and the sums vertical pixel differences of adjacent pixels within the pre-defined local neighborhood of pixels. For a 3 by 3 local neighborhood of pixels a horizontal and a vertical gradient pixel values are calculated. The mathematical formulas for the two gradient pixel values are given by
g1=|a−d|+|d−g|+|b−e|+|e−h|+|c−f|+|f−i|
and
g2=|a−b|+|b−c|+|d−e|+|e−f|+|g−h|+|h−i|
The calculated rank order gradient pixel value Gro for this alternative embodiment is given by:
Gro=MIN(g1,g2)
An alternative embodiment of the present involves calculating the rank order gradient pixel value Gro by calculating the minimum and maximum pixel value within local neighborhood of pixels about a pixel of interest. For a 3 by 3 pixel region centered about a pixel of interest e,
The rank order gradient pixel value Gro represents a measure of the spatial activity for a local region about the pixel of interest. The rank order gradient pixel value Gro is used by the gradient mask generator 230 to produce a weighting factor φ which is formulated as a function of the rank order gradient pixel value Gro given by
φ=γ(Gro)
where the γ( ) is given by the gamma function as the integration of a Gaussian. The function γ( ) is single valued function transform given by the equation:
where yo represents a minimum weighting factor, xmax represents a maximum abscissa value of the variable x, xt represents a transition parameter and where σx represents a transition rate parameter. According to the present invention, the weighting factors can assume more than 2 values.
An example of the gamma function g(x) is shown in
The weighting factor φ is calculated for each pixel in the paxelized luminance digital image channel. Thus φ1j represents a weighting factor calculated for the pixel located at the ith row and jth column. This two dimensional array of weighting factors, forms a spatial weighting mask. The weighting mask produced by the gradient mask generator 230 will be referred to as the gradient spatial weighting mask. The preferred embodiment of the present invention uses a gradient spatial weighting mask populated with weighting factors φ constrained to the values greater than or equal to 0 and less than or equal to 1. Those skilled in the art will recognize that the present invention will work with weighting factors φ ranging beyond 1.In particular, a fast implementation of the weighting factors φ involves using integer values ranging from 0 to 4095.
An alternative embodiment of the present invention uses the statistical gradient pixel value described in the preferred embodiment as the weighting factor φ directly. For this implementation the mathematical formulation is given by
φ=Gro
The spatial weighted averager 240, shown in
where i and j represent the row and column pixel indices, p1j represents the value of the luminance digital image channel pixel, φ1j represents the value of the gradient weighting factor, and ξ1j represents the value of the Gaussian spatial weighting factor. The brightness prediction value λ represents a spatially weighted average of pixel values which forms a good estimate of the average brightness of the digital image.
The optimal value for the gradient threshold value γ used by the gradient mask generator 230 shown in
εj=λj−Aj
where the index j denotes the jth test image. The gradient threshold value γ is varied until a minimum statistical standard deviation of the balance error values ε1, . . . , εN is found.
The invention has been described in detail with particular reference to certain preferred embodiments thereof, but it will be understood that variations and modifications can be effected within the spirit and scope of the invention.
This is a continuation-in-part of application Ser. No. 09/568,657, filed May 10, 2000 by Gindele, entitled “Digital Image Processing Method and Apparatus for Brightness Adjustment of Digital Images.”
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Number | Date | Country | |
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20020135743 A1 | Sep 2002 | US |
Number | Date | Country | |
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Parent | 09568657 | May 2000 | US |
Child | 10104221 | US |