基于局部二值模式的实时面部表情分类系统

S. Happy, Anjith George, A. Routray
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引用次数: 120

摘要

面部表情分析是人机交互(HCI)研究的热门领域之一。它在下一代用户界面、人类情感分析、行为和认知建模方面有几个应用。本文提出了一种以Haar分类器为人脸检测目的,以人脸图像不同块大小的局部二值模式(LBP)直方图为特征向量,利用主成分分析(PCA)对各种面部表情进行分类的人脸表情分类算法。该算法计算量小,可实时实现表情分类。由于面部表情和表情强度因人而异,因此提出了一种可定制的面部表情分析方法。该系统使用一个人的灰度正面面部图像来分类六种基本情绪,即快乐、悲伤、厌恶、恐惧、惊讶和愤怒。
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A real time facial expression classification system using Local Binary Patterns
Facial expression analysis is one of the popular fields of research in human computer interaction (HCI). It has several applications in next generation user interfaces, human emotion analysis, behavior and cognitive modeling. In this paper, a facial expression classification algorithm is proposed which uses Haar classifier for face detection purpose, Local Binary Patterns(LBP) histogram of different block sizes of a face image as feature vectors and classifies various facial expressions using Principal Component Analysis (PCA). The algorithm is implemented in real time for expression classification since the computational complexity of the algorithm is small. A customizable approach is proposed for facial expression analysis, since the various expressions and intensity of expressions vary from person to person. The system uses grayscale frontal face images of a person to classify six basic emotions namely happiness, sadness, disgust, fear, surprise and anger.
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