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Facial Expression Recognition in the Encrypted Domain Based on Local Fisher Discriminant Analysis

机译:基于局部Fisher判别分析的加密域人脸表情识别

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摘要

Facial expression recognition forms a critical capability desired by human-interacting systems that aim to be responsive to variations in the human's emotional state. Recent trends toward cloud computing and outsourcing has led to the requirement for facial expression recognition to be performed remotely by potentially untrusted servers. This paper presents a system that addresses the challenge of performing facial expression recognition when the test image is in the encrypted domain. More specifically, to the best of our knowledge, this is the first known result that performs facial expression recognition in the encrypted domain. Such a system solves the problem of needing to trust servers since the test image for facial expression recognition can remain in encrypted form at all times without needing any decryption, even during the expression recognition process. Our experimental results on popular JAFFE and MUG facial expression databases demonstrate that recognition rate of up to 95.24 percent can be achieved even in the encrypted domain.
机译:面部表情识别形成了人类交互系统所需的关键功能,该系统旨在响应人类的情绪状态变化。云计算和外包的最新趋势已导致需要由可能不受信任的服务器远程执行面部表情识别的要求。本文提出了一种系统,该系统解决了当测试图像位于加密域中时执行面部表情识别的挑战。更具体地说,据我们所知,这是在加密域中执行面部表情识别的第一个已知结果。这样的系统解决了需要信任服务器的问题,因为即使在表情识别过程中,用于面部表情识别的测试图像可以始终保持加密形式而无需任何解密。我们在流行的JAFFE和MUG面部表情数据库上的实验结果表明,即使在加密域中,也可以实现高达95.24%的识别率。

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