Low-rank and sparse matrix recovery from noisy observations via 3-block ADMM algorithm |
| |
Authors: | Peng Wang Chengde Lin Xiaobo Yang Shengwu Xiong |
| |
Affiliation: | School of Computer Science and Technology,Wuhan University of Technology, Wuhan 430070, China; School of Mathematics and Computational Science,Wuyi University, Jiangmen 529020, China,School of Computer Science and Technology,Wuhan University of Technology,Henan Branch of China Development Bank, Zhengzhou 450008, China and School of Computer Science and Technology,Wuhan University of Technology, Wuhan 430070, China |
| |
Abstract: | Recovering low-rank and sparse matrix from a given matrix arises in many applications, such as image processing, video background substraction, and so on. The 3-block alternating direction method of multipliers (ADMM) has been applied successfully to solve convex problems with 3-block variables. However, the existing sufficient conditions to guarantee the convergence of the 3-block ADMM usually require the penalty parameter $gamma$ to satisfy a certain bound, which may affect the performance of solving the large scale problem in practice. In this paper, we propose the 3-block ADMM to recover low-rank and sparse matrix from noisy observations. In theory, we prove that the 3-block ADMM is convergent when the penalty parameters satisfy a certain condition and the objective function value sequences generated by 3-block ADMM converge to the optimal value. Numerical experiments verify that proposed method can achieve higher performance than existing methods in terms of both efficiency and accuracy. |
| |
Keywords: | Low-rank sparse nuclear norm minimization $ell_1$-norm minimization 3-block alternating direction method. |
|
| 点击此处可从《Journal of Applied Analysis & Computation》浏览原始摘要信息 |
|
点击此处可从《Journal of Applied Analysis & Computation》下载免费的PDF全文 |
|