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遮挡人脸识别技术综述
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Abstract:
人脸识别作为一种非接触、便捷的生物识别技术,在安防、金融、身份认证等领域得到广泛应用。然而,面部遮挡会导致关键特征丢失,严重影响识别性能,成为该领域的重要挑战。针对这一问题,当前研究主要从两个方向展开:一是改进人脸识别算法本身,使其对遮挡具有更强的鲁棒性;二是通过遮挡修复技术还原完整人脸,再执行识别。本文系统综述了遮挡人脸识别技术的最新进展,首先分析直接识别方法,接着探讨基于遮挡修复的方法,并对比两种策略的优缺点及适用场景。最后,本文展望了未来研究方向,为遮挡人脸识别技术的进一步发展提供参考。
As a non-contact and convenient biometric technology, face recognition is widely used in security, finance, identity authentication and other fields. However, facial occlusion will lead to the loss of key features, which will seriously affect the recognition performance and become an important challenge in this field. To solve this problem, the current research mainly focuses on two aspects: one is to improve the face recognition algorithm itself to make it more robust to occlusion; The second is to restore the complete face through occlusion repair technology, and then perform recognition. This paper systematically summarizes the latest progress of occluded face recognition technology. First, it analyzes the direct recognition methods, then discusses the methods based on occlusion repair, and compares the advantages and disadvantages of the two strategies and their applicable scenarios. Finally, this paper looks forward to the future research directions and provides a reference for the further development of occluded face recognition technology.
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