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Principal Component Net Analysis for Face Recognition

机译:人脸识别的主成分网络分析

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摘要

In this paper, a new feature extraction called principal component net analysis (PCNA) is developed for face recognition. It looks a face image upon as two orthogonal modes: row channel and column channel and extracts Principal Components (PCs) for each channel. Because it does not need to transform an image into a vector beforehand, much more spacial discrimination information is reserved than traditional PCA, ICA etc. At the same time, because the two channels have different physical meaning, its extracted PCs can be understood easier than 2DPCA. Series of experiments were performed to test its performance on three main face image databases: JAFFE, ORL and FERET. The recognition rate of PCNA was the highest (PCNA, PCA and 2DPCA) in all experiments.
机译:在本文中,开发了一种新的特征提取方法,称为主成分网络分析(PCNA),用于面部识别。它以两种正交模式查找人脸图像:行通道和列通道,并为每个通道提取主成分(PC)。由于不需要事先将图像转换为矢量,因此保留了比传统PCA,ICA等更多的空间区分信息。同时,由于两个通道具有不同的物理含义,因此提取的PC较2DPCA。进行了一系列实验以测试其在三个主要的人脸图像数据库上的性能:JAFFE,ORL和FERET。在所有实验中,PCNA的识别率最高(PCNA,PCA和2DPCA)。

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