矩阵范数
稳健主成分分析
低秩近似
数学
迭代加权最小二乘法
奇异值
矩阵完成
算法
缩小
规范(哲学)
李普希茨连续性
图像复原
有界函数
近似算法
奇异值分解
迭代法
计算机科学
秩(图论)
迭代重建
数学优化
主成分分析
人工智能
图像(数学)
图像处理
组合数学
总最小二乘法
统计
政治学
汉克尔矩阵
量子力学
特征向量
物理
数学分析
法学
高斯分布
作者
Yan Huang,Guisheng Liao,Yijian Xiang,Lei Zhang,Jie Li,Arye Nehorai
标识
DOI:10.1109/tip.2019.2949383
摘要
The low-rank approximation problem has recently attracted wide concern due to its excellent performance in real-world applications such as image restoration, traffic monitoring, and face recognition. Compared with the classic nuclear norm, the Schatten-p norm is stated to be a closer approximation to restrain the singular values for practical applications in the real world. However, Schatten-p norm minimization is a challenging non-convex, non-smooth, and non-Lipschitz problem. In this paper, inspired by the reweighted ℓ1 and ℓ2 norm for compressive sensing, the generalized iterative reweighted nuclear norm (GIRNN) and the generalized iterative reweighted Frobenius norm (GIRFN) algorithms are proposed to approximate Schatten-p norm minimization. By involving the proposed algorithms, the problem becomes more tractable and the closed solutions are derived from the iteratively reweighted subproblems. In addition, we prove that both proposed algorithms converge at a linear rate to a bounded optimum. Numerical experiments for the practical matrix completion (MC), robust principal component analysis (RPCA), and image decomposition problems are illustrated to validate the superior performance of both algorithms over some common state-of-the-art methods.
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