Robust principal component analysis via weighted nuclear norm with modified second-order total variation regularization

被引:0
作者
Yi Dou
Xinling Liu
Min Zhou
Jianjun Wang
机构
[1] Southwest University,College of Computer and Information Science
[2] Southwest University,School of Mathematics and Statistics
[3] Southwest University,Information Construction Office
来源
The Visual Computer | 2023年 / 39卷
关键词
Low-rankness; Local smoothness; Weighted nuclear norm; Modified second-order total variation; WMSTV-RPCA; ADMM;
D O I
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中图分类号
学科分类号
摘要
The traditional robust principal component analysis (RPCA) model aims to decompose the original matrix into low-rank and sparse components and uses the nuclear norm to describe the low-rank prior information of the natural image. In addition to low-rankness, it has been found in many recent studies that local smoothness is also crucial prior in low-level vision. In this paper, we propose a new RPCA model based on weight nuclear norm and modified second-order total variation regularization (WMSTV-RPCA for short), which exploits both the global low-rankness and local smoothness of the matrix. Extensive experimental results show, both qualitatively and quantitatively, that the proposed WMSTV-RPCA can more effectively remove noise, and model dynamic scenes compared with the competing methods.
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页码:3495 / 3505
页数:10
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