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'Like charges repulsion and opposite charges attraction' law based multilinear subspace analysis for face recognition

机译:基于“像排斥力和相反电荷吸引”定律的多线性子空间分析用于人脸识别

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Multiple image variations occur in natural face images, such as the changes of pose, illumination, occlusion and expression. For non-specific variations based face recognition, learning effective features is an important research topic. Subspace learning is a widely used face recognition technique; however, numerous subspace analysis methods do not fully utilize the prior information of facial variations. Tensor-based multilinear subspace analysis methods can take advantage of the prior information, but they need to be further improved. With respect to a single facial variation, we observe that the image samples belonging to the same variation-state but different classes tend to cluster together, whereas those belonging to different variation-states but the same class tend to remain separate. This is adverse to classification. In this paper, motivated by the idea of charge law, "like charges repulsion and opposite charges attraction", In which like and opposite charges are regarded as same and different variation-states, respectively, we propose a non-specific variations based discriminant analysis (NVDA) criterion. It searches for an optimal discriminant subspace in which samples belonging to same variation-state but different classes are separable, whereas those belonging to different variation-states but same class cluster together. We then propose a novel face recognition approach called non-specific variations based multi-subspace analysis (NVMSA), which serially utilizes NVDA criterion to learn multiple discriminant subspaces corresponding to different variations. In the proposed approach, we design a strategy to select the serial calculation order of variations and provide a rule to choose projection vectors with favorable discriminant capabilities. Furthermore, we formulate the locally statistical orthogonal constraints for the multiple subspaces learning to remove the local correlation of discriminant features obtained from multiple variations. Experiments on the AR, Weizmann, PIE and LFW databases demonstrate the effectiveness and efficiency of the proposed approach. (C) 2018 Elsevier B.V. All rights reserved.
机译:自然人脸图像中会发生多种图像变化,例如姿势,照明,遮挡和表情的变化。对于基于面部识别的非特定变体,学习有效特征是重要的研究主题。子空间学习是一种广泛使用的人脸识别技术。然而,许多子空间分析方法不能完全利用面部变化的先验信息。基于张量的多线性子空间分析方法可以利用先验信息,但是需要进一步改进。对于单个面部变化,我们观察到属于相同变化状态但不同类别的图像样本趋于聚集在一起,而属于不同变化状态但相同类别的图像样本倾向于保持分离。这不利于分类。本文基于电荷定律的概念,即“相似电荷排斥和相反电荷吸引”,将相似电荷和相反电荷分别视为相同和不同的变化状态,提出了基于判别分析的非特定变化(NVDA)标准。它搜索一个最佳判别子空间,其中属于相同变化状态但不同类别的样本是可分离的,而属于不同变化状态但相同类别的样本聚在一起。然后,我们提出了一种新颖的面部识别方法,称为基于非特定变异的多子空间分析(NVMSA),该方法连续利用NVDA标准来学习对应于不同变异的多个可判别子空间。在提出的方法中,我们设计一种策略来选择变异的串行计算顺序,并提供一个规则来选择具有良好判别能力的投影矢量。此外,我们为学习多个子空间制定了局部统计正交约束,以消除从多个变化获得的判别特征的局部相关性。在AR,Weizmann,PIE和LFW数据库上进行的实验证明了该方法的有效性和效率。 (C)2018 Elsevier B.V.保留所有权利。

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