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A hierarchical algorithm with multi-feature fusion for facial expression recognition

机译:具有多特征融合的面部表情识别分层算法

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摘要

In this paper, a novel hierarchical algorithm with multi-feature fusion is proposed for facial expression recognition. In this area, many people have proposed many good results, but few of them made good use of the distribution characteristic of facial expression itself. In the analysis of the feature distribution, we find happiness and surprise are clearly separated from the other expressions. So we aim to distinguish these two expressions in the first layer of our algorithm using Gabor features. In the second layer, we use Gabor and LBP features respectively to classify the other five expressions. And a well designed result fusion of two branches is adopted to improve the accuracy. Experiments results on the Cohn-Kanade database show that our algorithm achieves excellent accuracy. Furthermore, our algorithm also performs well in our hybrid database, in which there are extensive variations of expressions. It demonstrates the good generalization ability of our algorithm.
机译:本文提出了一种新的具有多特征融合的层次算法用于面部表情识别。在这个领域,许多人提出了许多好的结果,但是很少有人充分利用面部表情本身的分布特征。在分析特征分布时,我们发现幸福和惊喜与其他表达方式明显分离。因此,我们旨在使用Gabor特征在算法的第一层中区分这两个表达式。在第二层中,我们分别使用Gabor和LBP特征对其他五个表达式进行分类。并采用精心设计的两个分支结果融合以提高准确性。在Cohn-Kanade数据库上的实验结果表明,我们的算法具有出色的准确性。此外,我们的算法在我们的混合数据库中也表现良好,在混合数据库中,表达式存在很大差异。它证明了我们算法的良好泛化能力。

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