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Gabor Feature Representation Method Based on Block Statistics and Its Application to Facial Expression Recognition

机译:基于块统计信息的Gabor特征表示方法及其在面部表情识别中的应用

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Facial expression representation based on Gabor features has attracted more and more attention and achieved great success in facial expression recognition for some favorable attributes of Gabor wavelets such as spatial locality and orientation selectivity. A large number of Gabor features are produced with varying parameters in the position, scale and orientation of filters, which cause huge computational complexity. In some existing methods, useful discriminatory information may be lost due to down sampling Gabor features directly. To reduce the loss, a Gabor features representation method based on block statistics is proposed In this paper. In addition, Support Vector Machine is used to match the features. The effect of this method is demonstrated by template matching test on JAFFE database, and the comparative test results show that this method can yield better recognition accuracy with much fewer Gabor features as well as less CPU time of feature matching.
机译:基于Gabor特征的面部表情表示引起了越来越多的关注,并且在面部表情识别中取得了巨大的成功,对Gabor小波的一些有利属性,例如空间位置和方向选择性。在滤波器的位置,尺度和方向上产生大量的Gabor特征,滤波器的尺度和方向,这导致巨大的计算复杂性。在某些现有方法中,由于直接抽样Gabor功能,可能会丢失有用的歧视信息。为了减少损失,本文提出了一种基于块统计的Gabor特征表示方法。此外,支持向量机用于匹配功能。通过Jaffe数据库的模板匹配测试证明了该方法的效果,比较测试结果表明,该方法可以产生更好的识别准确性,具有更少的嘉宝特征以及特征匹配的CPU时间更少。

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