Article ID Journal Published Year Pages File Type
528834 Journal of Visual Communication and Image Representation 2016 12 Pages PDF
Abstract

•A nonlocal image denoising approach using sparsity and low-rank priors is proposed.•A parameter-free optimal singular value shrinker is introduced for low-rank modeling.•An iterative patch-based low-rank regularized collaborative filtering is developed.•A nonlocal sparse model is applied to improve the low-rank filtering estimate.

Due to the ill-posed nature of image denoising problem, good image priors are of great importance for an effective restoration. Nonlocal self-similarity and sparsity are two popular and widely used image priors which have led to several state-of-the-art methods in natural image denoising. In this paper, we take advantage of these priors and propose a new denoising algorithm based on sparse and low-rank representation of image patches under a nonlocal framework. This framework consists of two complementary steps. In the first step, noise removal from groups of matched image patches is formulated as recovery of low-rank matrices from noisy data. This problem is then efficiently solved under asymptotic matrix reconstruction model based on recent results from random matrix theory which leads to a parameter-free optimal estimator. Nonlocal learned sparse representation is adopted in the second step to suppress artifacts introduced in the previous estimate. Experimental results, demonstrate the superior denoising performance of the proposed algorithm as compared with the state-of-the-art methods.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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