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A Novel Null Space-Based Kernel Discriminant Analysis for Face Recognition

机译:基于NULL的基于空间的面部识别判别分析

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The symmetrical decomposition is a powerful method to extract features for image recognition. It reveals the significant discriminative information from the mirror image of symmetrical objects. In this paper, a novel null space kernel discriminant method based on the symmetrical method with a weighted fusion strategy is proposed for face recognition. It can effectively enhance the recognition performance and shares the advantages of Null-space, kernel and symmetrical methods. The experiment results on ORL database and FERET database demonstrate that the proposed method is effective and outperforms some existing subspace methods.
机译:对称分解是提取图像识别特征的强大方法。它揭示了来自对称对象的镜像的显着辨别信息。本文提出了一种基于具有加权融合策略的对称方法的新型空间内核判别方法,用于面部识别。它可以有效提高识别性能,并分享空空间,内核和对称方法的优势。 ORL数据库和FERET数据库的实验结果表明,所提出的方法是有效和优于一些现有的子空间方法。

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