基于特征脸的面部表情识别

Hla Myat Maw, S. Thu, M. Mon
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引用次数: 0

摘要

本文介绍了一种基于特征脸的面部表情识别系统。面部表情识别在视频会议、监控、金融服务、健康治疗和门禁系统等领域的应用越来越普遍。识别的性能主要取决于几个挑战。在识别过程中,照明变化也是最具挑战性的。在该系统中,采用光照不变性技术作为预处理阶段,减少光照对人脸的影响。特征面作为特征提取步骤。使用K-NN和multi - svm分类器对面部表情进行识别,并对所提系统的性能进行测试。实验使用JAFFE标准数据集,面部表情识别准确率达到84.29%。该框架的准确性与在JAFFE数据库上测试的最先进的方法进行了对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eigenface based Facial Expression Recognition
In this paper, the facial expression recognition system is described based on Eigenface. Facial expression recognition has become increasingly common in several applications in the fields of video conferences, surveillance, financial services, health treatment, and access control system. The performance of recognition depends mainly on several challenges. Lighting variations are also the most challenging in the recognition process. In this system, illumination invariant techniques applied for decreasing the lighting affected faces as a preprocessing stage. Eigen faces are used as feature extraction step. K-NN and Multi-SVMs classifier are used to identify the facial expression and to test the performance of the proposed system. The standard dataset of JAFFE is used in the experiments and 84.29% accuracy is achieved for facial expression recognition. The accuracy of the framework is contrasted with the state of the art methods tested on the JAFFE database.
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