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Geometric Feature-Based Facial Expression Recognition in Image Sequences Using Multi-Class AdaBoost and Support Vector Machines

机译:使用多类AdaBoost和支持向量机的图像序列中基于几何特征的面部表情识别

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摘要

Facial expressions are widely used in the behavioral interpretation of emotions, cognitive science, and social interactions. In this paper, we present a novel method for fully automatic facial expression recognition in facial image sequences. As the facial expression evolves over time facial landmarks are automatically tracked in consecutive video frames, using displacements based on elastic bunch graph matching displacement estimation. Feature vectors from individual landmarks, as well as pairs of landmarks tracking results are extracted, and normalized, with respect to the first frame in the sequence. The prototypical expression sequence for each class of facial expression is formed, by taking the median of the landmark tracking results from the training facial expression sequences. Multi-class AdaBoost with dynamic time warping similarity distance between the feature vector of input facial expression and prototypical facial expression, is used as a weak classifier to select the subset of discriminative feature vectors. Finally, two methods for facial expression recognition are presented, either by using multi-class AdaBoost with dynamic time warping, or by using support vector machine on the boosted feature vectors. The results on the Cohn-Kanade (CK+) facial expression database show a recognition accuracy of 95.17% and 97.35% using multi-class AdaBoost and support vector machines, respectively.
机译:面部表情广泛用于情感,认知科学和社会互动的行为解释中。在本文中,我们提出了一种用于面部图像序列中全自动面部表情识别的新颖方法。随着面部表情随着时间的推移而发展,使用基于弹性束图匹配位移估计的位移,在连续的视频帧中自动跟踪面部界标。相对于序列中的第一帧,提取并归一化来自各个地标的特征向量以及成对的地标跟踪结果。通过获取来自训练面部表情序列的界标跟踪结果的中位数,可以形成每种面部表情的原型表达序列。在输入面部表情特征向量与原型面部表情特征向量之间具有动态时间扭曲相似距离的多类AdaBoost用作弱分类器,以选择判别特征向量的子集。最后,提出了两种面部表情识别方法,或者通过使用具有动态时间扭曲的多类AdaBoost,或者通过对增强特征向量使用支持向量机。 Cohn-Kanade(CK +)面部表情数据库上的结果分别显示了使用多类AdaBoost和支持向量机的识别准确率,分别为95.17%和97.35%。

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