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Color image canonical correlation analysis for face feature extraction and recognition

机译:用于面部特征提取和识别的彩色图像典型相关分析

摘要

Canonical correlation analysis (CCA) is a powerful statistical analysis technique, which can extract canonical correlated features from two data sets. However, it cannot be directly used for color images that are usually represented by three data sets, i.e., red, green and blue components. Current multi-set CCA (mCCA) methods, on the other hand, can only provide the iterative solutions, not the analytical solutions, when processing multiple data sets. In this paper, we develop the CCA technique and propose a color image CCA (CICCA) approach, which can extract canonical correlated features from three color components and provide the analytical solution. We show the mathematical model of CICCA, prove that CICCA can be cast as solving three eigen-equations, and present the realization algorithm of CICCA. Experimental results on the AR and FRGC-2 public color face image databases demonstrate that CICCA outperforms several representative color face recognition methods.
机译:典型相关分析(CCA)是一种强大的统计分析技术,可以从两个数据集中提取典型相关特征。但是,它不能直接用于通常由三个数据集即红色,绿色和蓝色分量表示的彩色图像。另一方面,当前的多集CCA(mCCA)方法在处理多个数据集时只能提供迭代解决方案,而不能提供解析解决方案。在本文中,我们开发了CCA技术,并提出了一种彩色图像CCA(CICCA)方法,该方法可以从三个颜色分量中提取典型的相关特征并提供分析解决方案。我们展示了CICCA的数学模型,证明了CICCA可以转化为求解三个特征方程,并提出了CICCA的实现算法。在AR和FRGC-2公共彩色人脸图像数据库上的实验结果表明CICCA优于几种代表性的彩色人脸识别方法。

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