Human-Computer Interaction Using Emotion Recognition from Facial Expression

F. Abdat, C. Maaoui, A. Pruski
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引用次数: 64

Abstract

This paper describes emotion recognition system based on facial expression. A fully automatic facial expression recognition system is based on three steps: face detection, facial characteristic extraction and facial expression classification. We have developed an anthropometric model to detect facial feature points combined to Shi&, Thomasi method. The variations of 21 distances which describe the facial features deformations from the neutral face, were used to coding the facial expression. Classification step is based on SVM method (Support Vector Machine). Experimental results demonstrate that the proposed approach is an effective method to recognize emotions through facial expression with an emotion recognition rate more than90% in real time. This approach is used to control music player based on the variation of the emotional state of the computer user.
基于面部表情情感识别的人机交互
本文描述了一种基于面部表情的情感识别系统。一个全自动面部表情识别系统主要分为三个步骤:人脸检测、面部特征提取和面部表情分类。我们结合Shi&, Thomasi方法开发了一种人体测量模型来检测面部特征点。用描述面部特征变形的21个距离的变化来编码面部表情。分类步骤基于支持向量机(SVM)方法。实验结果表明,该方法是一种通过面部表情识别情绪的有效方法,实时情绪识别率超过90%。该方法用于根据计算机用户情绪状态的变化来控制音乐播放器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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