Morphological wavelet transform with adaptive dyadic structures

Image Processing(2010)

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摘要
We propose a two component method for denoising multidimensional signals, e.g. images. The first component uses a dynamic programing algorithm of complexity O (N log N) to find an optimal dyadic tree representation of a given multidimensional signal of N samples. The second component takes a signal with given dyadic tree representation and formulates the denoising problem for this signal as a Second Order Cone Program of size O (N). To solve the overall denoising problem, we apply these two algorithms iteratively to search for a jointly optimal denoised signal and dyadic tree representation. Experiments on images confirm that the approach yields denoised signals with improved PSNR and edge preservation.
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关键词
dynamic programming,image denoising,mathematical morphology,trees (mathematics),wavelet transforms,adaptive dyadic structures,dyadic tree representation,dynamic programing algorithm,morphological operations,signal denoising,wavelet transform,Wavelet transforms,dynamic programming,image enhancement,morphological operations,multidimensional signal processing
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