论文标题
去除乘法噪声:非局部低级模型及其近端交替重新加权最小化算法
Multiplicative Noise Removal: Nonlocal Low-Rank Model and Its Proximal Alternating Reweighted Minimization Algorithm
论文作者
论文摘要
本文的目的是开发一种新型的数值方法,以有效地去除多重差噪声。自然图像的非本地自相似性暗示其非本地相似斑块形成的矩阵是低级别的。通过利用此低级别的先验利用乘法噪声去除,我们为此任务提出了一个非局部低级别模型,并开发了近端交替的重新加权最小化(PARM)算法,以解决该模型引起的优化问题。具体而言,我们利用级别函数的广义非凸替代物来使贴片矩阵正规化并开发出新的非局部低级别模型,这是一个非convex非conmooth优化问题,具有斑块数据保真度和广义的非局部非局部低级别正规化项。为了解决此优化问题,我们提出了PARM算法,该算法具有近端交替方案,并具有重新加权其子问题的近似值。对拟议的PARM算法进行了理论分析,以确保其全球收敛到临界点。数值实验表明,根据分离的图像的视觉质量,乘法噪声去除的提出的方法显着超过了现有方法,例如基准SAR-BM3D方法,以及PSNR(峰值信号与噪声比率)和SSIM(结构相似性索引量指标)值。
The goal of this paper is to develop a novel numerical method for efficient multiplicative noise removal. The nonlocal self-similarity of natural images implies that the matrices formed by their nonlocal similar patches are low-rank. By exploiting this low-rank prior with application to multiplicative noise removal, we propose a nonlocal low-rank model for this task and develop a proximal alternating reweighted minimization (PARM) algorithm to solve the optimization problem resulting from the model. Specifically, we utilize a generalized nonconvex surrogate of the rank function to regularize the patch matrices and develop a new nonlocal low-rank model, which is a nonconvex nonsmooth optimization problem having a patchwise data fidelity and a generalized nonlocal low-rank regularization term. To solve this optimization problem, we propose the PARM algorithm, which has a proximal alternating scheme with a reweighted approximation of its subproblem. A theoretical analysis of the proposed PARM algorithm is conducted to guarantee its global convergence to a critical point. Numerical experiments demonstrate that the proposed method for multiplicative noise removal significantly outperforms existing methods such as the benchmark SAR-BM3D method in terms of the visual quality of the denoised images, and the PSNR (the peak-signal-to-noise ratio) and SSIM (the structural similarity index measure) values.