基于概念区域特征的面部表情识别

Huiquan Zhang, Sha Luo, O. Yoshie
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引用次数: 6

摘要

面部表情识别利用从特征动作中收集的信息来分析一个人的情绪和精神状态。近年来,它已成为人机交互、情感分析和合成人脸动画等领域的关键研究课题。本文提出了一种通过发现视觉特征与局部二值模式(LBP)之间的关联来识别面部表情的方法。与以往的许多研究不同,该方法基于局部二值模式的描述,自动跟踪面部区域并将面部分割成有意义的区域。然后从视频数据中逐帧累积概率,通过分析面部表情来捕捉面部表情的时间特征。通过提出的方法,面部表情的时间变化可以量化在各个区域。因此,在不牺牲识别结果的情况下,面部表情的识别过程往往更容易理解。利用10名志愿者的视频数据实现了该方法的实证评价结果。结果表明,该方法可以有效地将人脸分割成特定区域,并进行面部表情识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial expression recognition by analyzing features of conceptual regions
Facial expression recognition utilizes collection of information from characteristic actions to analyze emotions and mental states of a person. It has emerged as the pivotal research topics in areas such as human computer interaction, sentimental analysis and synthetic face animation over the last years. This paper proposes an approach for facial expression by discovering associations between visual feature and Local Binary Pattern (LBP). Unlike many previous studies, the proposed approach automatically tracks the facial area and segments face into meaningful areas based on description of Local Binary Pattern. And then it accumulates the probabilities throughout the frames from video data to capture the temporal characteristics of facial expressions by analyzing facial expressions. Through the proposed approach, the temporal variation of facial expression can be quantified in individual areas. Thus, the recognition process of facial expression tends to be more comprehensible without sacrificing results of recognition. The empirical evaluation results of the approach are realized using video data which is collected from 10 volunteers. The results demonstrated that the proposed approach can effectively segment face into specific area and recognize facial expression.
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