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Sparsity analysis versus sparse representation classifier

机译:稀疏分析与稀疏表示分类器

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Sparse representation classifier (SRC) is the state-of-the-art method, and the theory of SRC has interesting links to compressed sensing. This paper proposes a new method named Sparse Regression Analysis (SRA) for object representation and recognition. In SRA, the L1-norm minimization method is combined with regression process to represent the input signal. We show that the discriminative ability of SRC and SRA derives from the fact that the subset which most compactly expresses the input signal is activated in the regression analysis, and SRA is a more direct and powerful way to use compressed sensing for the recognition tasks. To achieve a further improvement, kernelized SRA (KSRA) is developed to make a nonlinear extension of SRA. The experiments are extensively conducted on both palmprint and face recognition, which show that the proposed methods achieve a much better performance than sparse representation classifier, the linear regression classification method, principal component analysis, kernel discriminant analysis, and linear discriminant analysis. (C) 2015 Elsevier B.V. All rights reserved.
机译:稀疏表示分类器(SRC)是最新的方法,而SRC的理论与压缩感知有着有趣的联系。本文提出了一种新的名为稀疏回归分析(SRA)的对象表示和识别方法。在SRA中,将L1范数最小化方法与回归过程结合起来以表示输入信号。我们表明,SRC和SRA的判别能力源于以下事实:在回归分析中激活了最紧凑表示输入信号的子集,而SRA是将压缩感测用于识别任务的更直接,更强大的方法。为了实现进一步的改进,开发了带内核的SRA(KSRA)以对SRA进行非线性扩展。实验在掌纹和人脸识别上进行了广泛的实验,结果表明,与稀疏表示分类器,线性回归分类方法,主成分分析,核判别分析和线性判别分析相比,所提出的方法具有更好的性能。 (C)2015 Elsevier B.V.保留所有权利。

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