Weighted Nuclear Norm Minimization with Application to Image Denoising

Shuhang Gu, Lei Zhang, W. Zuo, Xiangchu Feng
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引用次数: 1707

Abstract

As a convex relaxation of the low rank matrix factorization problem, the nuclear norm minimization has been attracting significant research interest in recent years. The standard nuclear norm minimization regularizes each singular value equally to pursue the convexity of the objective function. However, this greatly restricts its capability and flexibility in dealing with many practical problems (e.g., denoising), where the singular values have clear physical meanings and should be treated differently. In this paper we study the weighted nuclear norm minimization (WNNM) problem, where the singular values are assigned different weights. The solutions of the WNNM problem are analyzed under different weighting conditions. We then apply the proposed WNNM algorithm to image denoising by exploiting the image nonlocal self-similarity. Experimental results clearly show that the proposed WNNM algorithm outperforms many state-of-the-art denoising algorithms such as BM3D in terms of both quantitative measure and visual perception quality.
加权核范数最小化在图像去噪中的应用
作为低秩矩阵分解问题的一种凸松弛,核范数最小化问题近年来引起了广泛的研究兴趣。标准核范数最小化对每个奇异值进行同等正则化,以追求目标函数的凸性。然而,这极大地限制了它在处理许多实际问题(如去噪)时的能力和灵活性,在这些实际问题中,奇异值具有明确的物理意义,应该区别对待。本文研究了加权核范数最小化问题,其中奇异值被赋予不同的权重。分析了不同加权条件下WNNM问题的解。然后,利用图像的非局部自相似性,将所提出的WNNM算法应用于图像去噪。实验结果清楚地表明,所提出的WNNM算法在定量度量和视觉感知质量方面都优于BM3D等许多最先进的去噪算法。
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