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Centroid neural network for face recognition

机译:质心神经网络用于人脸识别

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摘要

An unsupervised competitive neural network for efficient recognition of facial images is proposed. The proposed unsupervised competitive neural network, called centroid neural network with Chi square distance measure (CNN-chi2), employs the Chi square measure as its distance measure and utilizes the local binary pattern (LBP) as an effective feature extraction tool for image data. The proposed CNN-chi2 is applied to a face recognition problem on the Yale face database. The results are compared with those of well-known approaches including KFD (Kernel Fisher Discriminant based on eigenfaces), RDA (Regularized Discriminant Analysis), and Sobel faces combined with 2DPCA (two dimensional Principle Component Analysis). The evaluated results demonstrate that the proposed CNN-chi2 algorithm outperforms recent state-of-art algorithms in terms of recognition rate.
机译:提出了一种用于有效识别人脸图像的无监督竞争神经网络。拟议的无监督竞争神经网络,称为带有卡方距离度量的质心神经网络(CNN-chi 2 ),采用卡方度量作为其距离度量,并利用局部二进制模式(LBP)作为有效的图像数据特征提取工具。提出的CNN-chi 2 应用于耶鲁人脸数据库中的人脸识别问题。将结果与包括KFD(基于特征脸的核Fisher判别),RDA(正则判别分析)和结合2DPCA(二维主成分分析)的Sobel面孔在内的著名方法进行了比较。评估结果表明,提出的CNN-chi 2 算法在识别率方面优于最新的算法。

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