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Real time facial expression recognition from image sequences using Support Vector Machines

机译:使用支持向量机从图像序列进行实时面部表情识别

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In this paper, a real-time method is proposed as a solution to the problem of facial expression classification in video sequences. The user manually places some of the Candide grid nodes to the face depicted at the first frame. The grid adaptation system, based on deformable models, tracks the entire Candide grid as the facial expression evolves through time, thus producing a grid that corresponds to the greatest intensity of the facial expression, as shown at the last frame. Certain points that are involved into creating the Facial Action Units movements are selected. Their geometrical displacement information, defined as the coordinates' difference between the last and the first frame, is extracted to be the input to a six class Support Vector Machine system. The output of the system is the facial expression recognized. The proposed real-time system, recognizes the 6 basic facial expressions with an approximately 98% accuracy.
机译:本文提出了一种实时方法来解决视频序列中的面部表情分类问题。用户手动将一些Candide网格节点放置到第一帧所示的面上。网格适应系统基于可变形模型,随着面部表情随时间的变化而跟踪整个Candide网格,从而生成与面部表情最大强度相对应的网格,如最后一帧所示。选择创建面部动作单元动作所涉及的某些点。提取它们的几何位移信息,定义为最后一帧与第一帧之间的坐标差,作为六类支持向量机系统的输入。系统的输出是识别出的面部表情。提出的实时系统可识别6种基本面部表情,准确率约为98%。

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