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引用次数: 18
摘要
大多数传统的表情分类系统跟踪面部成分区域,如眼睛、眉毛和嘴巴进行特征提取。本文利用面部成分定位动态面部纹理,如皱眉纹、鼻子皱纹模式和鼻唇沟,对面部表情进行分类。Adaboost采用Haar-like feature和Active Shape Model (ASM)对人脸进行精确检测,获取重要的人脸特征区域。利用Gabor滤波和拉普拉斯高斯滤波在获取的特征区域中提取纹理信息。这些纹理特征向量表示面部纹理从一种表情到另一种表情的变化。使用支持向量机对中性、快乐、惊讶、愤怒、厌恶、恐惧六种面部表情类型进行分类。采用Cohn-Kanade数据库对所提方法进行可行性测试,平均识别率达到91.7%。
A Facial Expression Classification System Based on Active Shape Model and Support Vector Machine
Most traditional expression classification systems track facial component regions such as eyes, eyebrows, and mouth for feature extraction. This paper utilized facial components to locate dynamic facial textures such as frown lines, nose wrinkle patterns, and nasolabial folds to classify facial expressions. Adaboost using Haar-like feature and Active Shape Model (ASM) are adopted to accurately detect face and acquire important facial feature regions. Gabor filter and Laplacian of Gaussian are used to extract texture information in the acquired feature regions. These texture feature vectors represent the changes of facial texture from one expression to another expression. Support Vector Machine is deployed to classify the six facial expression types including neutral, happiness, surprise, anger, disgust, and fear. Cohn-Kanade database was used to test the feasibility of proposed method and the average recognition rate reached 91.7%.