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Face recognition approach by subspace extended sparse representation and discriminative feature learning

机译:子空间扩展稀疏表示与判别特征学习的人脸识别方法

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To address the problem of face recognition where the number of the labeled samples is insufficient and those samples involve pose, illumination and expression variations, etc., this paper proposes a face recognition approach by subspace extended sparse representation and discriminative feature learning, called SESRC & LDF. In SESRC&LDF, each test image is considered to be the image with small pose variation or the image with large pose variation according to its symmetry. For each test image, if it is considered to be the former, it will be recognized by the proposed subspace extended sparse representation classifier (SESRC), otherwise, it will be recognized by the face recognition method based on learning discriminative feature (LDF) proposed in this paper. On eight benchmark face databases, including Yale, AR, LFW, Extended Yale B, FEI, FERET, UMIST and Georgia Tech, empirical results show that SESRC & LDF achieves the highest recognition rates, outperforming many algorithms. Those algorithms include some state-of-the-art ones, such as PLR, MDFR and OPR. (C) 2019 Elsevier B.V. All rights reserved.
机译:为了解决标记样本数量不足且这些样本涉及姿势,光照和表情变化等问题的人脸识别问题,本文提出了一种通过子空间扩展稀疏表示和判别特征学习的人脸识别方法,称为SESRC& LDF。在SESRC&LDF中,根据其对称性,每个测试图像都被视为姿态变化较小的图像或姿态变化较大的图像。对于每个测试图像,如果认为是前者,则将被提议的子空间扩展稀疏表示分类器(SESRC)识别,否则,将基于提出的学习识别特征(LDF)的人脸识别方法对其进行识别在本文中。在包括Yale,AR,LFW,Extended Yale B,FEI,FERET,UMIST和Georgia Tech等八个基准人脸数据库上,经验结果表明SESRC和LDF的识别率最高,优于许多算法。这些算法包括一些最新技术,例如PLR,MDFR和OPR。 (C)2019 Elsevier B.V.保留所有权利。

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