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Direct kernel neighborhood discriminant analysis for face recognition

机译:直接核邻域判别分析用于人脸识别

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摘要

A nonlinear face recognition technique based on neighborhood preserving discriminant analysis (NPDA) is proposed. The kernel trick is adopted to allow the efficient computation of local Fisher discriminant in high-dimensional feature space. Moreover, a direct solution for obtaining the optimal feature vectors in feature space is presented which can preserve the most discriminative information. The proposed algorithm is evaluated on the UMIST database, the ORL database and the FERET database by using six different methods. Experiments show that consistent and promising results are obtained.
机译:提出了一种基于邻域保留判别分析的非线性人脸识别技术。采用内核技巧可以有效地计算高维特征空间中的局部Fisher判别式。此外,提出了一种在特征空间中获得最佳特征向量的直接解决方案,该解决方案可以保留最具判别性的信息。通过使用六种不同的方法对UMIST数据库,ORL数据库和FERET数据库进行了评估。实验表明,获得了一致而有希望的结果。

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