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Recognizing faces with expressions: within-class space and between-class space

机译:用表达式识别面部:在课堂内空间和课堂间空间

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In this paper, we propose a novel technique for expression invariant face recognition, which is different from eigenfaces method from two aspects: the first is that instead of applying Principal Component Analysis (PCA) on the pixel domain to obtain eigenfaces, we train eigenmotion by applying PCA on motion vectors getting from the training face images with expression variations; the second is to consider the reconstructed errors of a test image in two spaces: the between-class eigenmotion subspace and the within-class eigenmotion subspace, which are used as the classification rule, in contrast to the traditional methods such as Euclidean distance or Mahalanobis distance in one subspace. Experimental results show that this method performs better than eigenfaces method in the presence of facial expression variations.
机译:在本文中,我们提出了一种新颖的表达不变性面部识别技术,这与来自两个方面的特征缺陷方法不同:首先是在像素域上施加主成分分析(PCA)以获得特征文件,我们训练特征措施在带有表达变化的训练面图像中应用PCA在运动向量上;第二个是考虑两个空格中的测试图像的重建错误:与传统方法(如欧几里德距离或Mahalanobis)相比,级别的eGenmotion子空间和类别初步辐射子空间中的级别eGenmotion子空间和级别的eIgenMotion子空间。一个子空间中的距离。实验结果表明,该方法在面部表情变化存在下比特征叶片方法更好。

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