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Face Recognition Under Occlusions and Variant Expressions With Partial Similarity

机译:遮挡和部分相似的变体表情下的人脸识别

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摘要

Recognition in uncontrolled situations is one of the most important bottlenecks for practical face recognition systems. In particular, few researchers have addressed the challenge to recognize noncooperative or even uncooperative subjects who try to cheat the recognition system by deliberately changing their facial appearance through such tricks as variant expressions or disguise (e.g., by partial occlusions). This paper addresses these problems within the framework of similarity matching. A novel perception-inspired nonmetric partial similarity measure is introduced, which is potentially useful in dealing with the concerned problems because it can help capture the prominent partial similarities that are dominant in human perception. Two methods, based on the general golden section rule and the maximum margin criterion, respectively, are proposed to automatically set the similarity threshold. The effectiveness of the proposed method in handling large expressions, partial occlusions, and other distortions is demonstrated on several well-known face databases.
机译:在不受控制的情况下进行识别是实际人脸识别系统的最重要瓶颈之一。尤其是,很少有研究人员解决了挑战,即试图通过变体表情或伪装(例如通过部分遮挡)等有意改变其面部表情来试图欺骗识别系统的不合作甚至不合作的受试者。本文在相似性匹配的框架内解决了这些问题。引入了一种新颖的,受感知启发的非度量部分相似性度量,由于它可以帮助捕获在人类感知中占主导地位的突出部分相似性,因此在解决相关问题方面可能很有用。提出了分别基于一般黄金分割规则和最大余量准则的两种方法来自动设置相似性阈值。在一些知名的人脸数据库上证明了该方法在处理大表情,部分遮挡和其他失真方面的有效性。

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