Multiplicative noise removal method based on non-local adaptive dictionary
An adaptive dictionary and multiplicative noise technology, applied in image data processing, instrumentation, computing, etc., can solve the problem of insufficient edge, detail and texture information of the image preserved by the denoising algorithm, so as to effectively remove noise and reduce work Amount, enhance the effect of removal and texture features
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[0031] Multiplicative noise removal methods based on non-locally adaptive dictionaries, such as figure 1 shown, including the following steps:
[0032] Step 1. Obtain a natural image in the standard image library and add noise to the image.
[0033] Obtain natural images in the standard image library. The size of the images is all 256×256, and the gray value is between 0-255. Add multiplicative noise that obeys the Gamma distribution to each standard image. The noise is divided into 3 levels, namely Visual number L=4,10,16.
[0034] Step 2, transform the noisy image into the logarithmic domain.
[0035] In order to make the image meaningful in the logarithmic domain, we adjust the gray value of the noise image to [1, 256], and then transform the multiplicative noise into additive noise through logarithmic transformation. The multiplicative noise model is: y= uv. Where y represents the observed image, u represents the original image, and v represents the multiplicative noise...
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