Microsoft Word - Optimal parameters for nearest neighbor deblurring algorit..
نویسنده
چکیده
A new method for determining the optimal parameters for Nearest Neighbor Deblurring algorithm is presented. The maximum entropy in image frequency domain is used as the optimization criteria. The proposed method allows finding optimal parameters from three images: the image in focus and two images at adjacent levels. An automatic parameter setup procedure can be built on the basis of proposed method.
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