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Semi-supervised classification of facial expression using a mixture of multivariate t distributions

机译:使用多元t分布的混合物对人脸表情进行半监督分类

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摘要

This paper addresses the semi-supervised classification of facial expression images using a mixture of multivariate t distributions. The facial expression features are first extracted into labelled graph vectors using the Gabor wavelet transformation. We then learn a mixture of multivariate t distributions by using the labelled graph vectors, and set correspondence between the component distributions and the basic facial emotions. According to this correspondence, the classification of a given testing image is implemented in a probabilistic way according to its fitted posterior probabilities of component memberships. Specifically, we perform hard classification of the testing image by assigning it into an emotional class that the corresponding mixture component has the highest posterior probability, or softly use the posterior probabilities as the estimates of the semantic ratings of expressions. The experimental results on the Japanese female facial expression database, Ekman 's Pictures of Facial Affect database and the AR database demonstrate the effectiveness of the proposed method.
机译:本文介绍了使用多元t分布的混合对人脸表情图像进行半监督分类的方法。首先使用Gabor小波变换将面部表情特征提取到标记的图形向量中。然后,我们通过使用标记的图形向量来学习多元t分布的混合,并设置成分分布和基本面部表情之间的对应关系。根据该对应关系,给定的测试图像的分类是根据其适合的成员资格后验概率以概率方式实现的。具体来说,我们通过将测试图像分配到对应类别的混合成分具有最高后验概率的情感类别中来对测试图像进​​行硬分类,或者将后验概率作为表达式的语义等级的估计值进行软化。在日本女性面部表情数据库,Ekman的面部表情图片数据库和AR数据库上的实验结果证明了该方法的有效性。

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