稳健主成分分析
矩阵分解
计算机科学
奇异值分解
矩阵范数
稀疏矩阵
低秩近似
主成分分析
非负矩阵分解
基质(化学分析)
算法
人工智能
数学优化
数学
数学分析
特征向量
物理
材料科学
量子力学
汉克尔矩阵
复合材料
高斯分布
作者
Peng Pan,Yongli Wang,Mingyuan Zhou,Zhipeng Sun,Ge He
标识
DOI:10.1117/1.jei.27.2.023034
摘要
Background recovery is a key technique in video analysis, but it still suffers from many challenges, such as camouflage, lighting changes, and diverse types of image noise. Robust principal component analysis (RPCA), which aims to recover a low-rank matrix and a sparse matrix, is a general framework for background recovery. The nuclear norm is widely used as a convex surrogate for the rank function in RPCA, which requires computing the singular value decomposition (SVD), a task that is increasingly costly as matrix sizes and ranks increase. However, matrix factorization greatly reduces the dimension of the matrix for which the SVD must be computed. Motion information has been shown to improve low-rank matrix recovery in RPCA, but this method still finds it difficult to handle original video data sets because of its batch-mode formulation and implementation. Hence, in this paper, we propose a motion-assisted RPCA model with matrix factorization (FM-RPCA) for background recovery. Moreover, an efficient linear alternating direction method of multipliers with a matrix factorization (FL-ADM) algorithm is designed for solving the proposed FM-RPCA model. Experimental results illustrate that the method provides stable results and is more efficient than the current state-of-the-art algorithms.
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