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首页> 外文期刊>EURASIP journal on advances in signal processing >Face recognition using nonparametric-weighted Fisherfaces
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Face recognition using nonparametric-weighted Fisherfaces

机译:使用非参数加权Fisherface的人脸识别

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This study presents an appearance-based face recognition scheme called the nonparametric-weighted Fisherfaces (NW-Fisherfaces). Pixels in a facial image are considered as coordinates in a high-dimensional space and are transformed into a face subspace for analysis by using nonparametric-weighted feature extraction (NWFE). According to previous studies of hyperspectral image classification, NWFE is a powerful tool for extracting hyperspectral image features. The Fisherfaces method maximizes the ratio of between-class scatter to that of within-class scatter. In this study, the proposed NW-Fisherfaces weighted the between-class scatter to emphasize the boundary structure of the transformed face subspace and, therefore, enhances the separability for different persons' face. The proposed NW-Fisherfaces was compared with Orthogonal Laplacianfaces, Eigenfaces, Fisherfaces, direct linear discriminant analysis, and null space linear discriminant analysis methods for tests on five facial databases. Experimental results showed that the proposed approach outperforms other feature extraction methods for most databases.
机译:这项研究提出了一种基于外观的面部识别方案,称为非参数加权Fisherfaces(NW-Fisherfaces)。面部图像中的像素被视为高维空间中的坐标,并通过使用非参数加权特征提取(NWFE)转换为面部子空间以进行分析。根据以前对高光谱图像分类的研究,NWFE是提取高光谱图像特征的强大工具。 Fisherfaces方法使类间散布与类内散布的比率​​最大化。在这项研究中,提出的NW-Fisherfaces加权了类间散布,以强调变换后的脸部子空间的边界结构,因此增强了不同人脸的可分离性。将拟议的NW-Fisherfaces与正交Laplacianfaces,Eigenfaces,Fisherfaces,直接线性判别分析和零空间线性判别分析方法进行比较,以在五个面部数据库上进行测试。实验结果表明,该方法优于大多数数据库的其他特征提取方法。

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