Abstract

Sparse coding (SC) models have been proven as powerful tools applied in image restoration tasks, such as patch sparse coding (PSC) and group sparse coding (GSC). However, these two kinds of SC models have their respective drawbacks. PSC tends to generate visually annoying blocking artifacts, while GSC models usually produce over-smooth effects. Moreover, conventional minimization-based convex regularization was usually employed as a standard scheme for estimating sparse signals, but it cannot achieve an accurate sparse solution under many realistic situations. In this paper, we propose a novel approach for image restoration via simultaneous patch-group sparse coding (SPG-SC) with dual-weighted minimization. Specifically, in contrast to existing SC-based methods, the proposed SPG-SC conducts the local sparsity and nonlocal sparse representation simultaneously. A dual-weighted minimization-based non-convex regularization is proposed to improve the sparse representation capability of the proposed SPG-SC. To make the optimization tractable, a non-convex generalized iteration shrinkage algorithm based on the alternating direction method of multipliers (ADMM) framework is developed to solve the proposed SPG-SC model. Extensive experimental results on two image restoration tasks, including image inpainting and image deblurring, demonstrate that the proposed SPG-SC outperforms many state-of-the-art algorithms in terms of both objective and perceptual quality.

Highlights

  • As an important task in the field of image processing, image restoration has attracted considerable interests for many researchers and been widely applied in various areas such as medical image analysis [1], remote sensing [2] and digital photography [3]

  • Bearing the above concerns in mind, this paper proposes a novel approach for image restoration via simultaneous patch-group sparse coding (SPG-Sparse coding (SC)) with a dual-weightedp minimization

  • To make the optimization tractable, we develop a non-convex generalized iteration shrinkage algorithm based on the alternating direction method of multipliers (ADMM)

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Summary

Introduction

Image prior-based regularization for image restoration can be expressed by the following minimization problem,. TV-based methods remove the noise artifacts effectively, but they often erase the fine details and lean to over-smooth the images due to the piecewise constant assumption [6,7] Another crucial property of natural images is to model the prior on image patches. Exploited the NSS prior for image restoration under the framework of group-based sparse representation. Bearing the above concerns in mind, this paper proposes a novel approach for image restoration via simultaneous patch-group sparse coding (SPG-SC) with a dual-weightedp minimization. A new dual-weightedp minimization based on non-convex regularization is presented, which aims for enhancing the sparse representation capability of the proposed SPG-SC framework in image restoration tasks.

Patch Sparse Coding
Group Sparse Coding
Image Restoration Using Simultaneous Patch-Group Sparse Coding with
Modeling of Simultaneous Patch-Group Sparse Coding for Image Restoration
X G Sub-Problem
AG Sub-Problem
BG Sub-Problem
Setting the Weight and Regularization Parameter
Summary of the Proposed Algorithm
Experimental Results
Parameter Setting
Image Inpainting
Image Deblurring
Algorithm Convergence
Suitable Setting of the Power p
Conclusions
Full Text
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