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S2DPCA with DM and FM in Face Recognition

机译:具有DM和FM的S2DPCA人脸识别

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摘要

Face symmetrical feature can be applied to two-dimensional principal component analysis (2DPCA) for face image feature extraction, and this procedure can be called symmetrical 2DPCA (S2DPCA). Now, these S2DPCA-based face recognition algorithms almost pay much attention to the feature extraction, and the classification measures have been little investigated. In this paper, the typical similarity measure used in 2DPCA is applied to S2DPCA, which is the sum of the Euclidean distance between two feature vectors in feature matrix, called distance measure (DM). The similarity measure based on Frobenius-norm is also developed to classify face images for S2DPCA. Furthermore, the relative theories on S2DCPA are proofed. The experimental results on ORL and FERET face databases show that S2DPCA has the potential to outperform traditional 2DPCA, especially on condition that DM is used for S2DPCA.
机译:人脸对称特征可以应用于二维主成分分析(2DPCA)以提取人脸图像特征,此过程可以称为对称2DPCA(S2DPCA)。现在,这些基于S2DPCA的人脸识别算法几乎都非常关注特征提取,并且很少研究分类措施。在本文中,将2DPCA中使用的典型相似性度量应用于S2DPCA,这是特征矩阵中两个特征向量之间的欧式距离之和,称为距离度量(DM)。还开发了基于Frobenius范数的相似性度量来对S2DPCA的人脸图像进行分类。此外,有关S2DCPA的相关理论也得到了证明。在ORL和FERET人脸数据库上的实验结果表明,S2DPCA有可能胜过传统2DPCA,特别是在将DM用于S2DPCA的情况下。

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