Fully Associative Patch-Based 1-to-N Matcher for Face Recognition

Lingfeng Zhang, I. Kakadiaris
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引用次数: 3

Abstract

This paper focuses on improving face recognition performance by a patch-based 1-to-N signature matcher that learns correlations between different facial patches. A Fully Associative Patch-based Signature Matcher (FAPSM) is proposed so that the local matching identity of each patch contributes to the global matching identities of all the patches. The proposed matcher consists of three steps. First, based on the signature, the local matching identity and the corresponding matching score of each patch are computed. Then, a fully associative weight matrix is learned to obtain the global matching identities and scores of all the patches. At last, the l1-regularized weighting is applied to combine the global matching identity of each patch and obtain a final matching identity. The proposed matcher has been integrated with the UR2D system for evaluation. The experimental results indicate that the proposed matcher achieves better performance than the current UR2D system. The Rank-1 accuracy is improved significantly by 3% and 0.55% on the UHDB31 dataset and the IJB-A dataset, respectively.
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基于全关联补丁的1对n匹配人脸识别
本文的重点是通过基于补丁的1对n签名匹配器来学习不同面部补丁之间的相关性,从而提高人脸识别性能。提出了一种基于补丁的全关联签名匹配器(FAPSM),使每个补丁的局部匹配身份有助于所有补丁的全局匹配身份。提出的匹配器包括三个步骤。首先,根据签名计算每个补丁的局部匹配身份和对应的匹配分数;然后,学习一个完全关联的权重矩阵,得到所有patch的全局匹配恒等式和分数。最后,利用11正则化加权对每个patch的全局匹配恒等式进行组合,得到最终的匹配恒等式。建议的匹配器已与UR2D系统集成以进行评估。实验结果表明,所提出的匹配器比现有的UR2D系统具有更好的性能。在UHDB31数据集和IJB-A数据集上,Rank-1的准确率分别提高了3%和0.55%。
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