首页> 外文会议>Computer Vision/Computer Graphics Collaboration Techniques; Lecture Notes in Computer Science; 4418 >Classification of Facial Expressions Using K-Nearest Neighbor Classifier
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Classification of Facial Expressions Using K-Nearest Neighbor Classifier

机译:使用K最近邻分类器对面部表情进行分类

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In this paper, we have presented a fully automatic technique for detection and classification of the six basic facial expressions from nearly frontal face images. Facial expressions are communicated by subtle changes in one or more discrete features such as tightening the lips, raising the eyebrows, opening and closing of eyes or certain combinations of them. These discrete features can be identified through monitoring the changes in muscles movement (Action Units) located near about the regions of mouth, eyes and eyebrows. In this work, we have used eleven feature points that represent and identify the principle muscle actions as well as provide measurements of the discrete features responsible for each of the six basic human emotions. A multi-detector approach of facial feature point localization has been utilized for identifying these points of interests from the contours of facial components such as eyes, eyebrows and mouth. Feature vector composed of eleven features is then obtained by calculating the degree of displacement of these eleven feature points from a nonchangeable rigid point. Finally, the obtained feature sets are used for training a K-Nearest Neighbor Classifier so that it can classify facial expressions when given to it in the form of a feature set. The developed Automatic Facial Expression Classifier has been tested on a publicly available facial expression database and on an average 90.76% successful classification rate has been achieved.
机译:在本文中,我们提出了一种用于从近额面部图像中检测和分类六种基本面部表情的全自动技术。面部表情通过一种或多种离散特征的细微变化传达,例如收紧嘴唇,抬起眉毛,睁眼和闭眼或它们的某些组合。这些离散的特征可以通过监视位于嘴,眼和眉毛附近区域的肌肉运动(动作单位)的变化来识别。在这项工作中,我们使用了11个特征点来表示和识别主要的肌肉动作,并提供了对负责六种基本人类情感的离散特征的度量。面部特征点定位的多检测器方法已用于从面部组件(例如眼睛,眉毛和嘴巴)的轮廓中识别这些兴趣点。然后,通过计算这11个特征点相对于不变的刚性点的位移程度,来获得由11个特征组成的特征向量。最后,将获得的特征集用于训练K最近邻分类器,以便在以特征集的形式给予面部表情时可以对面部表情进行分类。已开发的自动面部表情分类器已在公开的面部表情数据库上进行了测试,平均成功分类率为90.76%。

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