Total variation, adaptive total variation and nonconvex smoothly clipped absolute deviation penalty for denoising blocky images

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The total variation-based image denoising model has been generalized and extended in numerous ways, improving its performance in different contexts. We propose a new penalty function motivated by the recent progress in the statistical literature on high-dimensional variable selection. Using a particular instantiation of the majorization-minimization algorithm, the optimization problem can be efficiently solved and the computational procedure realized is similar to the spatially adaptive total variation model. Our two-pixel image model shows theoretically that the new penalty function solves the bias problem inherent in the total variation model. The superior performance of the new penalty function is demonstrated through several experiments. Our investigation is limited to “blocky” images which have small total variation.

论文关键词:MM algorithm,SCAD penalty,Total variation denoising

论文评审过程:Received 19 August 2009, Revised 23 March 2010, Accepted 25 March 2010, Available online 31 March 2010.

论文官网地址:https://doi.org/10.1016/j.patcog.2010.03.022