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Automatic facial expression recognition based on spatiotemporal descriptors

机译:基于时空描述符的自动表情识别

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Facial expression's machine analysis is one of the most challenging problems in Human-Computer Interaction (HCI). Naturally, facial expressions depend on subtle movements of facial muscles to show emotional states. After having studied the relations between basic expressions and corresponding facial deformation models, we propose two new textons, VTB and moments on spatiotemporal plane, to describe the transformation of human face during facial expressions. These descriptors aim at catching both general shape changes and motion texture details. Therefore, modeling the temporal behavior of facial expression captures the dynamic deformation of facial components. Finally, SVM based system is used to efficiently recognize the expression for a single image in sequence. Then, the probabilities of all the frames are used to predict the class of the current sequence. The experimental results are evaluated on both Cohan-Kanade and MMI databases. By comparison to other methods, the effectiveness of our method is clearly demonstrated.
机译:面部表情的机器分析是人机交互(HCI)中最具挑战性的问题之一。自然,面部表情依赖于面部肌肉的细微运动来显示情绪状态。在研究了基本表情与相应的面部变形模型之间的关系之后,我们提出了两个新的文本,即VTB和时空平面上的矩,以描述面部表情期间人脸的转换。这些描述符旨在捕获一般的形状变化和运动纹理细节。因此,对面部表情的时间行为进行建模可以捕获面部组件的动态变形。最后,基于SVM的系统用于有效地识别单个图像的顺序表达。然后,将所有帧的概率用于预测当前序列的类别。在Cohan-Kanade数据库和MMI数据库上评估了实验结果。与其他方法相比,我们的方法的有效性得到了明显证明。

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