首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >CLASSIFYING FACIAL EXPRESSIONS USING LEVEL SET METHOD BASED LIP CONTOUR DETECTION AND MULTI-CLASS SUPPORT VECTOR MACHINES
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CLASSIFYING FACIAL EXPRESSIONS USING LEVEL SET METHOD BASED LIP CONTOUR DETECTION AND MULTI-CLASS SUPPORT VECTOR MACHINES

机译:使用基于水平集方法的唇部轮廓检测和多类支持向量机对面部表情进行分类

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摘要

This paper describes a fully automated computer vision system for detection and classification of the seven basic facial expressions using Multi-Class Support Vector Machine (SVM). Facial expressions are communicated by subtle changes in one or more discrete features such as tightening of the lips, raising the eyebrows, opening and closing of eyes or certain combination of them, which can be identified through monitoring the changes in muscle movements (Action Units), located around the regions of mouth, eyes and eyebrows. For classifying facial expressions, an analytic representation of face with 15 feature points has been used that provides visual observation of the discrete features responsible for the seven basic facial expressions. Feature points from the region of mouth are detected by segmenting the lip contour applying a variational formulation of the level set method. A multidetector approach of facial feature point detection is utilized for identifying the feature-points from the regions of eyes, eyebrows and nose. Feature vectors composed of 15 features are then obtained with respect to the average representation of neutral face and are used to train a Multiclass SVM classifier. The proposed method has been tested over two different facial expression image databases and the average successful recognition rates of 92.04% and 86.33% have been achieved.
机译:本文介绍了一种使用多类支持向量机(SVM)来检测和分类七个基本面部表情的全自动计算机视觉系统。面部表情通过一种或多种离散特征的细微变化来传达,例如紧紧嘴唇,抬起眉毛,睁眼和闭眼或它们的某种组合,这些可以通过监视肌肉运动的变化来识别(动作单位) ,位于嘴巴,眼睛和眉毛的周围。为了对面部表情进行分类,使用了具有15个特征点的面部解析表示,可以直观观察负责7种基本面部表情的离散特征。通过使用级别设置方法的变式对嘴唇轮廓进行分割,可以检测到来自嘴巴区域的特征点。面部特征点检测的多检测器方法用于从眼睛,眉毛和鼻子的区域中识别特征点。然后,针对中性脸部的平均表示,获得由15个特征组成的特征向量,并将其用于训练Multiclass SVM分类器。该方法已经在两个不同的面部表情图像数据库上进行了测试,平均成功识别率达到92.04%和86.33%。

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