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Group-based sparse representation for image restoration.

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TLDR
The proposed group-based sparse representation (GSR) is able to sparsely represent natural images in the domain of group, which enforces the intrinsic local sparsity and nonlocal self-similarity of images simultaneously in a unified framework.
Abstract
Traditional patch-based sparse representation modeling of natural images usually suffer from two problems. First, it has to solve a large-scale optimization problem with high computational complexity in dictionary learning. Second, each patch is considered independently in dictionary learning and sparse coding, which ignores the relationship among patches, resulting in inaccurate sparse coding coefficients. In this paper, instead of using patch as the basic unit of sparse representation, we exploit the concept of group as the basic unit of sparse representation, which is composed of nonlocal patches with similar structures, and establish a novel sparse representation modeling of natural images, called group-based sparse representation (GSR). The proposed GSR is able to sparsely represent natural images in the domain of group, which enforces the intrinsic local sparsity and nonlocal self-similarity of images simultaneously in a unified framework. In addition, an effective self-adaptive dictionary learning method for each group with low complexity is designed, rather than dictionary learning from natural images. To make GSR tractable and robust, a split Bregman-based technique is developed to solve the proposed GSR-driven l 0 minimization problem for image restoration efficiently. Extensive experiments on image inpainting, image deblurring and image compressive sensing recovery manifest that the proposed GSR modeling outperforms many current state-of-the-art schemes in both peak signal-to-noise ratio and visual perception.

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Citations
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A Survey of Sparse Representation: Algorithms and Applications

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ISTA-Net: Interpretable Optimization-Inspired Deep Network for Image Compressive Sensing

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Plug-and-Play ADMM for Image Restoration: Fixed-Point Convergence and Applications

TL;DR: It is shown that for any denoising algorithm satisfying an asymptotic criteria, called bounded denoisers, Plug-and-Play ADMM converges to a fixed point under a continuation scheme.
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Rank Minimization for Snapshot Compressive Imaging

TL;DR: A joint model is built to integrate the nonlocal self-similarity of video/hyperspectral frames and the rank minimization approach with the SCI sensing process and an alternating minimization algorithm is developed to solve the non-convex problem of SCI reconstruction.
Proceedings ArticleDOI

Hyperspectral Image Super-Resolution via Non-local Sparse Tensor Factorization

TL;DR: Experimental results demonstrate the superiority of the proposed NLSTF approach over several state-of-the-art HSI super-resolution approaches.
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