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Facial Expression Recognition Based on Quaternion-Space and Multi-features Fusion

机译:基于四元空间和多特色融合的面部表情识别

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摘要

There is an increasing trend of using feature fusion technique in facial expression recognition. However, when traditional serial or parallel feature fusion methods are used, the problem of highly dimensional features and insufficient fusion of possible feature categories always exist. In order to solve these problems, a novel facial expression recognition method based on quaternion-space and multi-features fusion is proposed. Firstly, four different kinds of expression features are extracted such as Gabor wavelet, LBP, LPQ and DCT features, then PCA+CCA framework is proposed and used to reduce the dimensions of the four original features. Secondly, quaternion is used to construct the combinative features. Thirdly, a novel quaternion-space HDA method is proposed and used as the dimensional reduction method of the combinative features. Finally, SVM is used and set as the classifier. Experimental results indicate that the proposed method is capable of fusing four kinds of features more effectively while it achieves higher recognition rates than the traditional feature fusion methods.
机译:在面部表情识别中使用特征融合技术存在越来越大的趋势。然而,当使用传统的串行或并联特征融合方法时,始终存在高尺寸特征和可能的特征类别的可能性不足。为了解决这些问题,提出了一种基于四元流空间和多特征融合的新型面部表情识别方法。首先,提取四种不同类型的表达特征,例如Gabor小波,LBP,LPQ和DCT功能,然后提出了PCA + CCA框架,并用于减少四个原始功能的尺寸。其次,使用四元度来构建组合特征。第三,提出了一种新型四元流空间HDA方法,并用作组合特征的尺寸减少方法。最后,使用SVM并将其设置为分类器。实验结果表明,该方法能够更有效地融合四种特征,而它达到比传统特征融合方法更高的识别率。

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