The priority application number Japanese patent application No.2005-289357 upon which this patent is based is hereby incorporated by reference.
1. Field of the Invention
The present invention relates to an image processing apparatus and an image processing program, for performing a chroma saturation correction of the input image based on a chroma saturation distribution of the image.
2. Description of the Related Art
Conventionally, an image processing apparatus for correcting the color of an input image according to properties of the hue, the chroma saturation, or the lightness of the input image has been developed.
However, these image processing apparatus may output unnatural images because of not having a high precision of correction.
For example, according to a technology indicated in publication of a Japanese patent application 2001-230941 (publication number), chroma saturation of an input image is corrected by controlling a chroma saturation enhancing coefficient based on an average chroma saturation value acquired from a histogram of the chroma saturation of the input image. According to such technology, a suitable correction is possible if the input images have the chroma saturation distribution like that shown in
However, even if the average chroma saturation value of the image is the same as the distribution shown in
The object of present invention is to offer an image processing apparatus and an image processing program performing a suitable chroma saturation correction to various input images, and generating natural images. In order to achieve the object, the correction is performed based on a chroma saturation correction coefficient which is determined according to properties of the chroma saturation distribution of an input image.
In present invention, an image processing apparatus performing a chroma saturation correction of an input image includes the following structures:
(a) A chroma saturation distribution properties calculator for calculating an average and a variation of the chroma saturation of an input image,
(b) A chroma saturation correction coefficient calculator for calculating a chroma saturation correction coefficient based on the average and the variation of the chroma saturation, and,
(c) A chroma saturation correction executor for executing a chroma saturation correction to the input image based on the calculated correction coefficient.
According to the image processing apparatus above, the chroma saturation correction quantity is calculated considering not only an average of the chroma saturation of an input image but also a distribution of the chroma saturation. Therefore, even if the averages are the same, a different chroma saturation correction can be performed to the input images.
Preferably, the chroma saturation correction coefficient calculator calculates a first coefficient based on the variation of the chroma saturation, calculates a second coefficient calculated based on the average of the chroma saturation and then calculates a correction coefficient based on the first coefficient and the second coefficient.
Preferably, said chroma saturation correction coefficient calculator decreases the first coefficient as the variation increases, if the variation is beyond a predetermined value.
Preferably, the chroma saturation correction coefficient calculator judges whether the input image belongs to a chromatic color area, or an achromatic color area, based on the average of the chroma saturation. When it is judged that the input image belongs to the achromatic color area, the second coefficient is increased as the average increase. When it is judged that the input image belongs to the chromatic color area, the second coefficient is decreased as the average increases. The coefficient calculator may determine the largest value of the second coefficient based on the first coefficient.
Preferably, the chroma saturation correction coefficient calculator calculates a standard chroma saturation correction coefficient based on the average and the variation of the chroma saturation. Preferably, the chroma saturation correction executor calculates the correction coefficient for each pixel based on the standard correction coefficient and the chroma saturation of each pixel. Also, the executor performs the correction for each pixel, based on the calculated correction coefficient.
The above image processing apparatus bases the correction upon the correction coefficient calculated by the correction coefficient calculator, and further can adjust the correction suitable for each pixel according to the chroma saturation of each pixel.
Preferably, the chroma saturation correction executor first judges whether the input image of each pixel belongs to a chromatic color area, or to an achromatic color area, based on the chroma saturation of each pixel. For example, if the chroma saturation of the input image is smaller than a predetermined value, it can be supposed that the image belongs to the achromatic color area, and if not, the image may belong to the chromatic color area. Therefore, the judging is performed based on this supposition. For pixels judged as an achromatic color area, the chroma saturation correction coefficient of the pixel is increased as the chroma saturation of the pixel increases. The correction coefficient is increased in the range below the standard chroma saturation correction coefficient. For pixels judged as a chromatic color area, the correction coefficient of the pixel is decreased, as the chroma saturation of the pixel increases. The correction coefficient is increased in the range below the standard coefficient. Thus, the maximum value of the chroma saturation correction coefficient of the pixel is equivalent to the standard chroma saturation correction coefficient.
Preferably, the chroma saturation correction executor calculates the chroma saturation correction coefficient classified by color for each pixel, based on the standard chroma saturation correction coefficient and a hue of each pixel. Then, the chroma saturation correction executor calculates the chroma saturation correction coefficients for each pixel, based on the calculated correction coefficient classified by color and the chroma saturation of each pixel. Then the executor performs the correction to the input image, based on the calculated correction coefficient of each pixel.
According to the above image processing apparatus, the chroma saturation correction for each pixel can be performed considering not only the chroma saturation but also the hue in each pixel. According to a conventional image processing apparatus, for example, if a color is flesh color and the chroma saturation is strong in a certain pixel, the image may become an unnatural flesh color, if the same correction as the other pixels is performed. However, according to image processing apparatus of present invention, the correction to each pixel can be suppressed considering the hue and the chroma saturation in each pixel.
Preferably, the chroma saturation correction executor judges whether the input image of each pixel belongs to the chromatic color area, or to the achromatic color area, based on the chroma saturation of each pixel. For pixels judged as the achromatic color area, the chroma saturation correction coefficient of the pixel is increased, as the chroma saturation of the pixel increases. The correction coefficient of the pixel is increased in the range below the chroma saturation correction coefficient classified by color of each pixel. For the pixels judged as a chromatic color area, the chroma saturation correction coefficient of the pixel is made small, as the chroma saturation of the pixel increases. The correction coefficient of the pixel is increased in the range below the correction coefficient classified by color of each pixel. Thus, the largest value of the correction coefficient for each pixel is equivalent to the correction coefficient classified by color.
The image processing program of present invention is a program for operating a computer as an image processing apparatus, which performs a chroma saturation correction of an input image. The program for operating the computer as the image processing apparatus, comprises the following structure:
(a) A chroma saturation distribution properties calculator, for calculating an average and a variation of chroma saturation of the input image,
(b) A chroma saturation correction coefficient calculator for calculating a correction coefficient based on the calculated average and the variation, and,
(c) A chroma saturation correction executor, for performing a chroma saturation correction to the input image based on the calculated chroma saturation correction coefficient.
In other words, the image processing program makes a computer to perform the steps including the following steps:
(i) A first step for calculating an average and a variation of chroma saturation of an input image,
(ii) A second step for calculating the chroma saturation correction coefficient, which is a degree of correction based on the calculated average and the variation, and,
(iii) A third step for executing the correction to the input image based on the calculated correction coefficient.
Preferably, the chroma saturation correction coefficient calculator calculates a standard correction coefficient based on the average and the variation of chroma saturation. The chroma saturation correction executor calculates the chroma saturation correction coefficient for each pixel, based on the chroma saturation of each pixel and the standard correction coefficient. Then, the correction executor executes the chroma saturation correction to input image based on the calculated correction coefficient for each pixel.
In other words, the image processing program further makes a computer calculate the chroma saturation correction coefficient for each pixel, based on a standard chroma saturation correction coefficient and a chroma saturation of each pixel, in the third step mentioned above. Then, the computer executes the correction to the input image for each pixel, based on the calculated correction coefficient for each pixel.
Preferably, the chroma saturation correction coefficient calculator calculates a standard chroma saturation correction coefficient based on an average and a variation of the chroma saturation. The chroma saturation correction executor calculates the chroma saturation correction coefficient classified by color for each pixel, based on the hue of each pixel and the calculated correction coefficient. The executor calculates the chroma saturation correction coefficient of each pixel based on the correction coefficient classified by color, and the chroma saturation of each pixel. Then, the correction executor performs a chroma saturation correction to an input image based on the calculated correction coefficient of each pixel.
In other words, the program makes a computer perform the following steps further in the third step mentioned above:
(i) A step calculating a chroma saturation correction coefficient classified by color of each pixel based on a hue of each pixel and a chroma saturation correction coefficient,
(ii) A step calculating the chroma saturation correction coefficient of each pixel, based on the calculated correction coefficient classified by color and a chroma saturation of each pixel, and,
(iii) A step executing a chroma saturation correction to an input image for each pixel, based on the calculated correction coefficient of each of pixel.
As mentioned above, according to present invention, a chroma saturation correction coefficient is determined according to the properties of chroma saturation distribution of an input image. The correction is performed based on the determined correction coefficient. As a result, a suitable chroma saturation correction can be performed to various input images. Therefore, an image processing apparatus and an image processing program which can generate a natural image is realized.
The features and the advantages of the present invention will be apparent from descriptions of following embodiments.
However, the following embodiments are examples of the present invention. The meaning of present invention or vocabularies of each structure in claims are not restricted to what are indicated in following embodiments.
Hereafter, the embodiments of present invention are explained accompanying the drawings.
(First Embodiment)
The image processor 100 contains the chroma saturation distribution properties calculator 101, the chroma saturation correcting gain calculator 102, and the chroma saturation correction executor 103 in the construction, as shown in
The meaning of the “chroma saturation” is a vividness of color, or color purity. If the chroma saturation is high, it means that the color is pure. If the chroma saturation is low, it means that the color is gray or muddy. A degree of the chroma saturation ranges from 0% to 100%.
S=√{square root over (RY2+BY2)} (Eq.1)
The hue expresses a tone, such as red, yellow, green, cyan, blue, and magenta. The hue is shown on the hue circle by angle (0 to 360 degrees) from the color difference signal BY. In other words, hue H can be expressed by an arctangent of RY/BY as shown in following formula (Eq.2):
Hereafter, each structure of the image processor 100 of
(Chroma Saturation Distribution Properties Calculator 101)
The chroma saturation distribution properties calculator 101 separates a color difference signal from the inputted image signal. The chroma saturation for every pixel is calculated from the separated color difference signal, and the average and the variance of the chroma saturation, are calculated as chroma saturation distribution properties.
(Standard Chroma Saturation Correcting Gain Calculator 102)
The standard chroma saturation correcting gain calculator 102 calculates the standard chroma saturation correcting gain Gs (called “Gs”, hereafter) based on AVE and V which were calculated by the chroma saturation distribution properties calculator 101.
Specifically, the standard chroma saturation correcting gain calculator 102 calculates Gm, which is the maximum value Gs can take, based on a function prescribing a relationship between V and Gm (hereafter ,the function is called “V-Gm function”).
Next, Gs is calculated based on a function prescribing a relationship between AVE and Gs (hereafter the function is called “AVE-Gs function”). This AVE-Gs function can be prescribed based on Gm calculated from the V-Gm function.
By the way, it can be supposed that an input image signal in which AVE is extremely small is an image which is rather achromatic. If a strong chroma saturation correction is applied to such an image, an unnatural image may be obtained, because some color may be attached to the image.
Moreover, it can be supposed that an input image with large AVE is an image which is rather chromatic. If a strong chroma saturation correction is applied to such an image, an unnatural color may be attached to the image, because of the color crushing.
On the other hand, variance V expresses the convergence or the scatter of the chroma saturation from the chroma saturation average. Therefore, it can be supposed that an input image signal having an extremely small V is an image whose chroma saturation distribution (or histogram) is extremely concentrated near the average. If a strong chroma saturation correction is applied to such an image, an unnatural image may be obtained, because the noise in the image is emphasized.
On the other hand, it can be supposed that an input image signal having an extremely large V is an image whose chroma saturation distribution is not concentrated in a certain area, but is scattered. If a strong chroma saturation correction is applied to such an image, an unnatural color may be obtained, because the color may be crushed in pixels having high chroma saturation.
Supposing above characteristics of input images, in the image processor 100, the standard chroma saturation correcting gain calculator 102 calculates Gs based on the V-Gm function and AVE-Gs function, which have properties as shown in
In V-Gm function, a boundary value of V between a small variance area and a large variance area is prescribed as V_BOUND. It is prescribed that in the segment (1), namely where V satisfies V<V_BOUND, Gm decreases sharply, as V decreases.
If V satisfies V=V_BOUND, Gm is maximized. In the segment (2), namely where V satisfies V>V_BOUND, Gm decreases gradually rather than the case of the segment (1), as the V increases.
In AVE-Gs function, a boundary chroma saturation average value of the achromatic color image area and the chromatic color image area is prescribed as AVE_BOUND. The area where AVE satisfies AVE<AVE_BOUND is prescribed as the achromatic color image area. In segment (3), namely where AVE satisfies AVE<AVE_BOUND, Gs decreases sharply as the AVE decreases.
Gs is maximized if AVE satisfies AVE=AVE_BOUND. In segment (4), where AVE satisfies AVE>AVE_BOUND, it is prescribed that Gs decreases gradually rather than the case of segment (3), as the AVE increases.
Summarizing the above, the V-Gm function is prescribed as follows:
The AVE-Gs function is prescribed as follows:
When it can be considered that the input image signal belongs to an achromatic color area, the image processor 100 can calculate Gs, so as to apply a weak chroma saturation correction when the input image approaches the achromatic image (i.e. when the chroma saturation distribution of the image separates from a predetermined value) by using the V-Gm function and the AVE-Gs function which are mentioned above.
When it can be supposed that an input image signal belongs to a chromatic color area, the image processor 100 can calculate Gs, so as to apply a weak chroma saturation correction when the chroma saturation average of the input image signal increases (i.e. when the chroma saturation distribution of the image separates from a predetermined value).
(Chroma Saturation Correction Executor 103)
The chroma saturation correction executor 103 first calculates a chroma saturation correction quantity by multiplying Gs and input color difference signal for each pixel, and then generates an output image signal by adding said correction quantity to input color difference signal for each pixel.
For example, if RY [n] and BY [n] stands for input color difference signals in pixel n, and RYOUT [n] and BYOUT [n] stands for the color difference signal in pixel n after the correction, the RYOUT [n] and the BYOUT [n] can be calculated by Eq.4:
RYOUT[n]=RY[n](1+Gs)
BYOUT[n]=BY[n](1+Gs) (Eq.4)
Conventionally, an unsuitable correction might be executed for an input image signal having properties like
In this first embodiment described above, the V-Gm function and the AVE-Gs function are prescribed by the combination of proportion lines. The inclination of the line may be changed according to the properties of the input image signal etc. Moreover, those functions may be prescribed by the combination of functions, such as logarithm curve or quadratic curves.
(Second Embodiment)
The image processor 200 includes the chroma saturation distribution properties calculator 101, the standard chroma saturation correcting gain calculator 104, and the chroma saturation correction executor 103 in its construction, as shown in
Hereafter, each structure included in the image processor 200 of
(Standard Chroma Saturation Correcting Gain Calculator 104)
The standard chroma saturation correcting gain calculator 104 calculates Gs based on AVE and V which were calculated by chroma saturation distribution properties calculator 101.
Concretely, the standard chroma saturation correcting gain calculation part 104 first calculates a chroma saturation variance based correcting gain Gv, which is one coefficient for calculating Gs, using a predetermined function prescribing a relationship between V and Gv (hereafter the function is called “V-Gv function”).
Next, a chroma saturation average based chroma saturation correcting gain Ga (hereafter called “Ga”), which is another coefficient for calculating Gs, using a predetermined function prescribing a relationship between AVE and Ga (hereafter the function is called “AVE-Ga function”).
Next, Gs is calculated by multiplying by Gv and Ga, as shown in following formula (Eq.5):
Gs=Gv×Ga (Eq.5)
The V-Gv function and the AVE-Ga function are prescribed, as shown in
The V-Gv function has the similar properties as V-Gm function which is indicated in the first embodiment (
The AVE-Ga function has the similar properties as the AVE-Gs function indicated in the first embodiment (
By using above indicated standard chroma saturation correcting gain calculator 104, a similar effect as the first embodiment can be acquired.
Third Embodiment
The image processor 300 includes the chroma saturation distribution properties calculator 101, the standard chroma saturation correcting gain calculator 102, and the chroma saturation correction executor 105 in its construction, as shown in
Hereafter, each construction included in the image processor 300 of
Chroma Saturation Correction Executor 105
The chroma saturation correction executor 105 calculates a coefficient for calculating a chroma saturation correction quantity, which is based on chroma saturation of input image signal, for each pixel (the coefficient is hereafter called “chroma saturation correcting gain”).
The chroma saturation correction executor 105 calculates the chroma saturation correcting gain G (hereafter called just “G”) for each pixel, based on Gs and chroma saturation of input image signal in each pixel. Here, the chroma saturation correction executor 104 keeps G not to exceed Gs. Concretely, the chroma saturation correction executor 105 calculates G for each pixel based on a predetermined function prescribing the relationship between chroma saturation S and G (the function is hereafter called “S-G function”).
By the way, when the input image has small chroma saturation, it can be supposed that the image is an achromatic image. If a strong chroma saturation correction is applied for such an image, some color may be attached, and the image may become unnatural.
On the other hand, if a strong chroma saturation correction is applied for an image having large chroma saturation, some color may be crushed, or some unnatural color may be obtained.
Supposing the above characteristics of the input signals, the chroma saturation correction executor 105 of the image processor 300 calculates G for each pixel based on the S-G function, as shown in
In S-G function, it is prescribed that the boundary chroma saturation value of the achromatic color area and the chromatic color area is S_BOUND, and is prescribed that the area where S satisfies S <S_BOUND is an achromatic color area. Also, it is defined that in segment (9), where S satisfies S <S_BOUND, G decreases sharply as S decreases.
Moreover, in S-G function, it is prescribed that when S is equal to S_BOUND, G takes the maximum value Gs, and is prescribed that in segment (10), where S satisfies S>S_BOUND, G decreases gradually rather then the case of segment (9) as the S increases.
Summarizing the above, the S-G function is prescribed that,
Next, the chroma saturation correction executor 105 first calculates chroma saturation correction quantity, which is obtained by multiplying an input color difference signal and chroma saturation correcting gain. Then, the obtained quantity is added to the input color difference signal to generate an output image signal.
Concretely, if RY [n] and BY [n] stands for input color difference signals in pixel n, G [n] stands for chroma saturation correcting gain in each pixel, and RYOUT [n] and BYOUT[n] stands for color difference signals in each pixel after correction, the RYOUT [n] and the BYOUT [n] are calculated by Eq.6:
RYOUT [n]=RY [n](1 +G[n])
BYOUT [n]=BY ]n](1 +G[n]) (Eq.6)
As mentioned above, in the image processor 300 of this embodiment, the chroma saturation correction executor 105 suppresses the amount of Gs according to chroma saturation of an input image signal for each pixel.
In other words, for a pixel where it can be supposed that the chroma saturation belongs to an achromatic color area, the chroma saturation correction executor 105 calculates G so as to weaken the chroma saturation correction when chroma saturation decreases, based on the S-G function prescribed above.
When the chroma saturation belongs to a chromatic color area, but in a comparatively low chroma saturation area, G is set to about the same amount as Gs, in order to apply a stronger correction.
For a pixel where it can be supposed that the chroma saturation belongs to the chromatic color area, G is calculated so that the correction may be weakened, as the chroma saturation increases.
By performing such a chroma saturation correction, color crushing and unnatural coloring can be suppressed for each pixel, and can achieve. more exact half toning.
In this embodiment, the chroma saturation correction executor 105 prescribes S-G function by combination of proportion lines. The inclination of those lines may be changed according to the correction result. Moreover, the function may be prescribed by combination of logarithm curves, or quadratic curves, instead of proportion lines.
The standard chroma saturation correcting gain calculator 102 may be replaced by the standard chroma saturation correcting gain calculator 104 which is used in the second embodiment.
(Fourth Embodiment)
The image processor 400 includes the chroma saturation distribution properties calculator 101, the standard chroma saturation correcting gain calculator 102, the chroma saturation correcting gain maximum value calculator 106, and the chroma saturation correction executor 107 in its construction, as shown in
Hereafter, each construction included in the image processor 400 of
Descriptions of the chroma saturation distribution properties calculator 101 and the standard chroma saturation correcting gain calculator 102 are omitted because they perform the similar processes as in the case of the first embodiment of the present invention.
(Chroma Saturation Correcting Gain Maximum Value Calculator 106)
The chroma saturation correcting gain maximum value calculator 106 separates a color difference signal from the input image signal, and calculates a hue from the separated color difference signal. Then, the maximum value of SG is calculated for every pixel. Here, “SG” stands for “chroma saturation correcting gain classified by color”, which is a coefficient for calculating the chroma saturation correction quantity based on the hue of the input image signal.
Concretely, the chroma saturation correcting gain maximum value calculator 106 calculates SGm, which is the maximum value of SG for each pixel, based on a function prescribing a relationship between hue H of an input image signal, and SGm (hereafter the function is called “H-SGm function”).
In the H-SGm function, Gs is set as the standard value for SGm. In a specific hue such as in hue of BH1, BH2, BH3, and BH4, the SGm is set to larger or smaller value than the Gs. Therefore, for specific colors such as flesh color, which an unnatural color may be obtained if the same chroma saturation correction as the other colors is performed, the chroma saturation correction can be weakened by setting SGm smaller for hue which corresponds to the specific color.
(Chroma Saturation Correction Executor 107)
The chroma saturation correction executor 107 calculates the SG for each pixel based on SGm of each pixel, and the chroma saturation of the input image signal of each pixel. Here, the chroma saturation correction executor 107 suppresses SG not to exceed SGm.
Concretely, the chroma saturation correction executor 107 calculates SG for each pixel based on a predetermined function prescribing a relationship between the chroma saturation S and SG (the function is hereafter called “S-SG function”).
The S-SG function has the similar properties as the S-G function indicated in the third embodiment (
The chroma saturation correction executor 107 first calculates the chroma saturation correction quantity by multiplying an input color difference signal and the SG, then adds the calculated correction quantity to the color difference signal for every pixel, to generate an output image signal.
Concretely, if RY [n] and BY [n] stands for input color difference signals of each pixel, SG [n] stands for chroma saturation correcting gain classified by color in pixel n, and RYOUT [n] and BYOUT [n] stands for color difference signals of each pixel after the chroma saturation correction, the RYOUT [n] and BYOUT [n] are calculated by Eq.7. Here, n expresses the number which identifies each pixel and is a positive whole number.
RYOUT [n]=RY [En](1+SG[n])
BYOUT [n]=BY [n](1+SG[n]) (Eq.7)
As mentioned above, in the image processor 400 in this fourth embodiment, the chroma saturation correcting gain maximum value calculator 106 and the chroma saturation correction executor 107, strengthen or weaken the chroma saturation correction considering also the hue of the input image signal, for each pixel.
By the way, there are some specific colors, such as flesh color, which people have memorized well. If the same correction as other colors is applied to such a flesh color, some unnatural color maybe output. However, according to the chroma saturation correction of this embodiment, such phenomena can be avoided by suppressing the correction to the specific color, and can perform a more natural correction.
(Fifth Embodiment)
The image processor 500 includes the chroma saturation distribution properties calculator 101, the standard chroma saturation correcting gain calculator 104, the chroma saturation correcting gain maximum value calculator 108, and the chroma saturation correction executor 107 in its construction, as shown in
Hereafter, the constructions included in the image processor 500 of
The chroma saturation distribution properties calculator 101, the standard chroma saturation correcting gain calculator 104, and the chroma saturation correction executor 107 perform the similar processes as in the case of the second embodiment and the fourth embodiment. Therefore, explanations for those are omitted.
(Chroma Saturation Correcting Gain Maximum Value Calculator 108)
The chroma saturation correcting gain maximum value calculator 108 calculates SGm for every pixel.
Concretely, the chroma saturation correcting gain maximum value calculator 108 first calculates CG (CG stands for “independent chroma saturation correcting gain classified by color”, and is a coefficient for calculating SGm) for every pixel, based on a function prescribing a relationship between the hue H of an input image signal and the CG (the function is hereafter called a “H-CG function”).
In the H-CG function, 1 is set as a standard value for CG. The CG is set to larger or smaller value than 1 for specific hue such as hue of BH1 to BH4.
Next, as shown in Eq.8, SGm of each pixel is acquired by multiplying Gs by CG for each pixel. Here, in Eq.8, n expresses the number identifying the pixel and is positive whole number:
SGm[n]=Gs×CG[n] (Eq.8)
By using the chroma saturation correcting gain maximum value calculator 108 of this embodiment, the similar effect or feature as the fourth embodiment can be acquired.
In the above, each embodiments of present invention were described in detail. Note that the scope of the present invention is not intended to be limited to the above mentioned embodiment. The embodiment of the present invention may be suitably and variously changed within the range of the technical idea shown in the appended claims.
For example, in each embodiment mentioned above, the average and the variation of chroma saturation of the input images are calculated based on an arithmetical mean. However, these may be calculated using a median value of the chroma saturation, or a mode of the chroma saturation.
Moreover, in V-Gm function and V-Gv function mentioned above, boundary of the small chroma saturation variance area and the large variance area is prescribed only by one predetermined value V_BOUND. However, the boundary may be prescribed as an area with a certain width.
Similarly, in the AVE-Gs function, the AVE-Ga function, and the S-G function mentioned above, the boundary of the achromatic color image area and the chromatic color image area is prescribed only by a single predetermined value AVE_BOUND or S_BOUND. However, the boundary may be prescribed as an area with a certain width respectively.
Furthermore, each structure of the image processor shown in
Moreover, the image processor of the present invention is applicable to graphic displays in general, such as liquid crystal displays or plasma displays, etc. In addition, the image processor is applicable to digital cameras, digital video cameras, etc.
Number | Date | Country | Kind |
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2005-289357 | Sep 2005 | JP | national |