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Adaptive algorithms for low-rank and sparse matrix recovery with truncated nuclear norm

机译:截断核范数的低秩和稀疏矩阵恢复的自适应算法

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摘要

Recent studies have shown that the use of the truncated nuclear norm (TNN) in low-rank and sparse matrix decomposition (LRSD) can realize a better approximation to rank function of matrix, and achieve effectively recovery effects. This paper addresses the algorithms for LRSD with adaptive TNN (LRSD-ATNN), and designs an efficient algorithmic frame inspired by the alternating direction method of multiple (ADMM) and the accelerated proximal gradient approach (APG). To establish the adaptive algorithms, the method of singular value estimate is utilized to find adaptively the number of truncated singular value. Experimental results on synthetic data as well as real visual data show the superiority of the proposed algorithm in effectiveness in comparison with the state-of-the-art methods.
机译:最近的研究表明,在低秩和稀疏矩阵分解(LRSD)中使用截断核范数(TNN)可以更好地逼近矩阵的秩函数,并有效地实现恢复效果。本文针对具有自适应TNN的LRSD算法(LRSD-ATNN)进行了研究,并设计了一种有效的算法框架,该算法的框架受多方向交替方向(ADMM)和加速近端梯度法(APG)的启发。为了建立自适应算法,利用奇异值估计方法来自适应地找到截断的奇异值的数量。综合数据和真实视觉数据的实验结果表明,与最新方法相比,该算法在有效性方面具有优势。

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