1. Field of the Invention
The present invention relates to a method for adjusting an image signal by a processor, and more specifically, to a method for image processing by unsharp masking.
2. Description of the Prior Art
Please refer to
A goal of image processing is to have the features of the image area 20 stand out while keeping the image area 20 and the surrounding edge area 22 in harmony. An adjustment of the image parameters of the whole image 14 will sacrifice some features that are not within the image area 20 or cause distortion of the image area 20. For this reason, some image processing methods adjust only the image parameters of the surrounding edge area 22 in order to emphasize the high frequency characteristic of the edge of the image.
The unsharp mask method is a method based on the concept mentioned above. According to the method, first unsharpen an image to obtain a low frequency element of the image, then subtract the unsharpened image from the original image to obtain a high frequency element of the original image. Apply a convolution operation to the remaining high frequency image and eventually add the subtracted low frequency image to the remaining high frequency image to complete the process. Although the unsharp mask method can sharpen the edge of the image, it also increases the high frequency element of the image and raises the luminance of the whole image, making it lighter. In addition, according to the conventional unsharp mask method, while applying the convolution operation to the high frequency image and adding back the subtracted low frequency image, because two operation intensive calculations are required to be processed simultaneously, processing time and image processing cost are increased.
It is therefore a primary object of the present invention to provide a method for adjusting an image signal by a processor to solve the problem mentioned above.
Briefly summarized, a method for adjusting an image signal by a processor includes providing a first low pass filter and a second low pass filter; generating an energy ratio of a band-pass image signal and the image signal according to the standard deviation of the low pass signal of the first low pass filter and the low pass signal of the second low pass filter; providing an image adjustment parameter and generating a weighting coefficient of the image signal according to the energy ratio and the image adjustment parameter; generating a third low pass filter according to the weighting coefficient of the image signal, the image adjustment parameter, the low pass signal of the first low pass filter, and the low pass signal of the second low pass filter; and adjusting the image signal according to the image signal and the third low pass filter.
These and other objectives of the present invention will no doubt become obvious to those of ordinary skill in the art after reading the following detailed description of the preferred embodiment that is illustrated in the various figures and drawings.
Please refer to
Please refer to
The image processing method according to the first embodiment of the present invention includes capturing the high frequency portion of the image 36 and applying a convolution operation, i.e. C2[h(x, y){circle around (x)}I(x, y)]. Then adding the weighting coefficient of the original signal, i.e. C1I(x, y), so that the high frequency portion can be emphasized. Further imposing a restriction according to conservation of energy, i.e. (Ef
More specifically, under the condition that a limited signal has the same energy in either time domain and space domain according to the Rayleigh's theorem, calculate the energy ratio
of the band-pass image signal h(x, y){circle around (x)}I(x, y) and the image signal I(x, y), wherein
σ1 and σ2 represent respectively the standard deviations of the low pass filter signal h1(x, y) of the first low pass filter 38 and the low pass filter signal h2(x, y) of the second low pass filter 40, and σ1 is not equivalent to σ2 so that
will not be zero and the band-pass filter signal h(x, y) can capture the high frequency portion of the image 36. Then obtain
on the bases that EI=C1EI+C2Eh{circle around (x)}1.
Subsequently, while determining the image adjustment parameter C2 and the weighting coefficient C1 of the image signal in Step 104 and Step 106, a maximum image distortion ratio must first be determined, that is the maximum acceptable energy decay of the unprocessed low frequency portion such as the image area 20 in
For the user's convenience, it is possible to provide the image adjustment normalized value between 0 and 1 normalized from the image adjustment parameter C2 by the input device 44 of the image processing system 30 so that the image adjustment parameter C2 can be obtained by multiplying the maximum image adjustment weighting coefficient C2|max with the image adjustment normalized value. That is, when a user inputs 1 as the normalized value by the input device 44, the image adjustment parameter C2 is
the weighting coefficient C1 of the image signal is 0.95, and the adjusted energy amplitude will be 5% in maximum. Alternatively, when the user inputs 0 as a corresponding weighting coefficient by the input device 44, the image adjustment parameter C2 is 0, the weighting coefficient C1 of the image signal is 1, and the adjusted energy amplitude will be 0% in minimum, which means not to adjust the image 36.
Consequently evaluate the third low pass filter 41 h3(x, y) using the first filter 38, the second filter 40, the above-mentioned C1 and C2, and the equation h3(x, y)=C1δ(x, y)+C2[h1(x, y)−h2(x, y)], wherein δ(x, y) is a unit pulse signal. Convolute the third low pass filter 41 and the image signal to obtain the adjusted image signal f1(x, y)=h3(x, y){circle around (x)}I(x, y). In such a way the luminance change in the prior art can be improved.
Please refer to
The image processing method according to the second embodiment is essentially the same to that of the first embodiment. The method is to capture the high frequency portion of the image 36 and apply a convolution operation, i.e.
then add the weighting coefficient of the original signal, i.e. C3I(x, y), so that the high frequency portion is emphasized. Additionally, impose a restriction according to the conservation of energy, i.e. (Ef
In the same manner, under the condition that a limited energy signal has the same energy in either time domain or space domain according to the Rayleigh's theorem, calculate the energy ratio
of the high pass image signal h′(x, y){circle around (x)}I(x, y) and the image signal I(x, y), wherein
and σ2 is larger than
so that
will be larger than zero, in other words, the band-pass filter signal h′(x, y){circle around (x)}I(x, y) is able to capture the high frequency portion of the image 36. Since the flowchart of the second embodiment is similar to that of the first embodiment, further description is hereby omitted.
In contrast to the prior art, the present invention is capable of sharpening the edge of an image while maintaining the luminance, so that the disadvantage of the prior art which makes the image lighter due to the increased high frequency portion can be improved. Additionally, in contrast to the operation intensive calculations caused by twice adjustments on image signals required by the prior art, the method according to the present invention only calculates weighted parameters and filter signals in space domain first. In such a manner the operations are reduced and, accordingly, the cost and time of image processing is reduced at the same time.
Those skilled in the art will readily observe that numerous modifications and alterations of the device may be made while retaining the teachings of the invention. Accordingly, the above disclosure should be construed as limited only by the metes and bounds of the appended claims.
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