Abstract

Non-local self-similarity (NLSS) is widely used as prior information in an image restoration method. In particular, a low-rankness-based prior has a significant effect on performance. On the other hand, a number of color extensions of NLSS-based grayscale image restoration methods have been developed. These extensions focus on the pixel-wise correlation among color channels. However, a natural color image also has a complex dependency, known as an inter-channel dependency, among local regions from different color channels. As a result, color artifacts appear in a denoised image obtained by using the existing methods. In this paper, we propose a novel non-local and inter-channel dependency-aware prior called the weighted tensor nuclear norm (WTNN). The proposed prior is derived by incorporating inter-channel dependency to low-rank-based NLSS prior. The WTNN is a low-rankness-of-the-third-order patch tensor, and we apply it to the tensors constructed with non-local similar patches. It enables us to naturally represent the higher-order dependencies among similar color patches. We propose an image denoising algorithm using the WTNN and image restoration algorithm by using a non-trivial generalization of this algorithm. The experimental results clearly show that the proposed WTNN-based color image denoising and restoration algorithms outperform state-of-the-art methods.

Highlights

  • Color image restoration is a fundamental task in image processing that includes denoising, deblurring, inpainting, super-resolution, and compressed sensing restoration

  • In this paper, we proposed a novel color image non-local prior called the weighted tensor nuclear norm (WTNN) that we applied to the color image denoising method and the general color image restoration method

  • The tensor is constructed from a similar patch group searched for across an input color image

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Summary

INTRODUCTION

Color image restoration is a fundamental task in image processing that includes denoising, deblurring, inpainting, super-resolution, and compressed sensing restoration. Weighted nuclear norm minimization (WNNM) is a milestone work of a non-local grayscale image denoising that has been followed by many extension methods [19]–[21]. The WTNN is a non-trivial generalization of the WNN, but is a generalization of the local color nuclear norm (LCNN) [29], which is the image restoration method that uses inter-channel dependency and low rankness. CBM3D is a color image denoising method that uses inter-channel correlation This method is an extension of the block matching 3D filtering (BM3D), a non-local grayscale image denoising method that uses block matching (similar patch exploring) and 3D filtering (combination of 3D orthonormal transform and filtering). ADMM is widely used in image restoration methods based on image prior information

DEFINITION OF WTNN
APPLICATION TO COLOR IMAGE DENOISING
APPLICATION TO COLOR IMAGE RESTORATION
THE EFFECTIVENESS OF THE INEXACT SOLUTION
CONCLUSION
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