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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning discriminative singular value decomposition representation for face recognition
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Learning discriminative singular value decomposition representation for face recognition

机译:学习判别奇异值分解表示的人脸识别

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摘要

Face representation is a critical step in face recognition. Recently, singular value decomposition (SVD) based representation methods have attracted researchers' attentions for their power of alleviating the facial variations. The SVD representation reveals that the SVD basis set is important for the recognition purpose and the corresponding singular values (SVs) are regulated to form a more effective representation image. However, there exists a common problem in the existing SVD based representation methods: they all empirically make a rule to regulate the SVs, which is obviously not optimal in theory. To address this problem, in this paper, we propose a novel method named learning discriminative singular value decomposition representation (LDSVDR) for face recognition. We build an individual SVD basis set for each image and then learn a common set of SVs by taking account of the information in the basis sets according to a discriminant criterion across the training images. The proposed model is solved by sequential quadratic programming (SQP) method. Extensive experiments are conducted on three popular face databases and the results demonstrate the effectiveness of our method when dealing with variations of illumination, occlusion, disguise and face sketch recognition task. (C) 2015 Elsevier Ltd. All rights reserved.
机译:人脸表示是人脸识别中的关键步骤。最近,基于奇异值分解(SVD)的表示方法因其缓解面部变化的能力而吸引了研究人员的注意力。 SVD表示揭示了SVD基集对于识别目的很重要,并且调节了相应的奇异值(SVs)以形成更有效的表示图像。但是,现有的基于SVD的表示方法存在一个普遍的问题:它们都根据经验制定规则来调节SV,这在理论上显然不是最佳的。为了解决这个问题,在本文中,我们提出了一种称为学习判别式奇异值分解表示(LDSVDR)的新方法来进行人脸识别。我们为每个图像建立一个单独的SVD基础集,然后根据训练图像上的判别标准,通过考虑基础集中的信息来学习一组通用的SV。提出的模型通过顺序二次规划(SQP)方法求解。在三个流行的人脸数据库上进行了广泛的实验,结果证明了该方法在处理光照,遮挡,伪装和人脸草图识别任务变化时的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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