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Nuclear Norm-Based 2-DPCA for Extracting Features From Images

机译:基于核规范的2-DPCA用于从图像中提取特征

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摘要

The 2-D principal component analysis (2-DPCA) is a widely used method for image feature extraction. However, it can be equivalently implemented via image-row-based principal component analysis. This paper presents a structured 2-D method called nuclear norm-based 2-DPCA (N-2-DPCA), which uses a nuclear norm-based reconstruction error criterion. The nuclear norm is a matrix norm, which can provide a structured 2-D characterization for the reconstruction error image. The reconstruction error criterion is minimized by converting the nuclear norm-based optimization problem into a series of F-norm-based optimization problems. In addition, N-2-DPCA is extended to a bilateral projection-based N-2-DPCA (N-B2-DPCA). The virtue of N-B2-DPCA over N-2-DPCA is that an image can be represented with fewer coefficients. N-2-DPCA and N-B2-DPCA are applied to face recognition and reconstruction and evaluated using the Extended Yale B, CMU PIE, FRGC, and AR databases. Experimental results demonstrate the effectiveness of the proposed methods.
机译:二维主成分分析(2-DPCA)是一种广泛使用的图像特征提取方法。然而,它可以等效地通过基于图像行的主成分分析来实现。本文介绍了一种称为基于核规范的2-DPCA(N-2-DPCA)的结构化二维方法,该方法使用了基于核规范的重建误差准则。核规范是矩阵规范,可以为重建误差图像提供结构化的二维特征。通过将基于核规范的优化问题转换为一系列基于F规范的优化问题,可以最大程度地减少重构误差标准。另外,N-2-DPCA扩展为基于双边投影的N-2-DPCA(N-B2-DPCA)。 N-B2-DPCA优于N-2-DPCA的优点是可以用较少的系数表示图像。 N-2-DPCA和N-B2-DPCA用于人脸识别和重建,并使用扩展Yale B,CMU PIE,FRGC和AR数据库进行评估。实验结果证明了所提方法的有效性。

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