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      Image Denoising Using Sparsifying Transform Learning and Weighted Singular Values Minimization

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          Abstract

          In image denoising (IDN) processing, the low-rank property is usually considered as an important image prior. As a convex relaxation approximation of low rank, nuclear norm based algorithms and their variants have attracted significant attention. These algorithms can be collectively called image domain based methods, whose common drawback is the requirement of great number of iterations for some acceptable solution. Meanwhile, the sparsity of images in a certain transform domain has also been exploited in image denoising problems. Sparsity transform learning algorithms can achieve extremely fast computations as well as desirable performance. By taking both advantages of image domain and transform domain in a general framework, we propose a sparsity transform learning and weighted singular values minimization method (STLWSM) for IDN problems. The proposed method can make full use of the preponderance of both domains. For solving the non-convex cost function, we also present an efficient alternative solution for acceleration. Experimental results show that the proposed STLWSM achieves improvement both visually and quantitatively with a large margin over state-of-the-art approaches based on an alternatively single domain. It also needs much less iteration than all the image domain algorithms.

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          Author and article information

          Journal
          01 April 2020
          Article
          2004.00753
          f62e7afd-0798-482d-a59d-b4409591dd0e

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          17 pages, 10 figures, 5 tables
          eess.IV cs.CV

          Computer vision & Pattern recognition,Electrical engineering
          Computer vision & Pattern recognition, Electrical engineering

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