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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Recovering low-rank and sparse matrix based on the truncated nuclear norm
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Recovering low-rank and sparse matrix based on the truncated nuclear norm

机译:基于截断的核规范恢复低级和稀疏矩阵

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摘要

Recovering the low-rank, sparse components of a given matrix is a challenging problem that arises in many real applications. Existing traditional approaches aimed at solving this problem are usually recast as a general approximation problem of a low-rank matrix. These approaches are based on the nuclear norm of the matrix, and thus in practice the rank may not be well approximated. This paper presents a new approach to solve this problem that is based on a new norm of a matrix, called the truncated nuclear norm (TNN). An efficient iterative scheme developed under the linearized alternating direction method multiple framework is proposed, where two novel iterative algorithms are designed to recover the sparse and low-rank components of matrix. More importantly, the convergence of the linearized alternating direction method multiple on our matrix recovering model is discussed and proved mathematically. To validate the effectiveness of the proposed methods, a series of comparative trials are performed on a variety of synthetic data sets. More specifically, the new methods are used to deal with problems associated with background subtraction (foreground object detection), and removing shadows and peculiarities from images of faces. Our experimental results illustrate that our new frameworks are more effective and accurate when compared with other methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:恢复给定矩阵的低级别,给定矩阵的稀疏组件是许多真实应用中出现的具有挑战性的问题。旨在解决该问题的现有传统方法通常是作为低秩矩阵的一般近似问题重新循环。这些方法基于矩阵的核标准,因此在实践中,等级可能不受很好的近似。本文提出了一种解决基于矩阵的新规范的新方法,称为截短的核规范(TNN)。提出了一种在线化交替方向法开发的高效迭代方案,其中旨在恢复两种新型迭代算法以恢复矩阵的稀疏和低秩分量。更重要的是,在数学上讨论并证明了我们的矩阵恢复模型上线性化交替方向方法的收敛性。为了验证所提出的方法的有效性,在各种合成数据集上进行一系列比较试验。更具体地,新方法用于处理与背景减法(前景对象检测)相关联的问题,以及从面部图像中移除阴影和特点。我们的实验结果表明,与其他方法相比,我们的新框架更有效和准确。 (c)2016 Elsevier Ltd.保留所有权利。

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