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Color space normalization: Enhancing the discriminating power of color spaces for face recognition

机译:色彩空间归一化:增强色彩空间对人脸识别的区分能力

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摘要

This paper presents the concept of color space normalization (CSN) and two CSN techniques, i.e., the within-color-component normalization technique (CSN-I) and the across-color-component normalization technique (CSN-II), for enhancing the discriminating power of color spaces for face recognition. Different color spaces usually display different discriminating power, and our experiments on a large scale face recognition grand challenge (FRGC) problem reveal that the RGB and XYZ color spaces are weaker than the I1I2I3, YUV, YIQ, and LSLM color spaces for face recognition. We therefore apply our CSN techniques to normalize the weak color spaces, such as the RGB and the XYZ color spaces. the three hybrid color spaces XGB, YRB and ZRG, and 10 randomly generated color spaces. Experiments using the most challenging FRGC version 2 Experiment 4 with 12,776 training images. 16,028 controlled target images, and 8.014 uncontrolled query images, show that the proposed CSN techniques can significantly and consistently improve the discriminating power of the weak color spaces. Specifically, the normalized RGB, XYZ, XGB, and ZRG color spaces are more effective than or as effective as the I1I2I3, YUV, YIQ and LSLM color spaces for face recognition. The additional experiments using the AR database validate the generalization of the proposed CSN techniques. We finally explain why the CSN techniques can improve the recognition performance of color spaces from the color component correlation point of view.
机译:本文提出了色彩空间归一化(CSN)的概念和两种CSN技术,即内部色彩分量归一化技术(CSN-I)和跨色彩分量归一化技术(CSN-II),以增强色彩饱和度。色彩空间对人脸识别的区分能力。不同的色彩空间通常显示出不同的辨别力,而我们针对大规模面部识别大挑战(FRGC)问题进行的实验表明,RGB和XYZ色彩空间比用于面部识别的I1I2I3,YUV,YIQ和LSLM色彩空间弱。因此,我们将CSN技术应用于弱色彩空间,例如RGB和XYZ色彩空间。三个混合色彩空间XGB,YRB和ZRG,以及10个随机生成的色彩空间。使用最具挑战性的FRGC版本2实验4进行的实验,带有12,776个训练图像。 1,028幅受控目标图像和8.014幅非受控查询图像表明,所提出的CSN技术可以显着并持续改善弱色彩空间的辨别能力。具体地说,归一化的RGB,XYZ,XGB和ZRG颜色空间比I1I2I3,YUV,YIQ和LSLM颜色空间更有效或与之相同。使用AR数据库的其他实验验证了所提出的CSN技术的一般性。我们最终将解释为什么CSN技术可以从颜色分量相关性的角度改善颜色空间的识别性能。

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