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A Discriminant Color Space Method for Face Representation and Verification on a Large-scale Database

机译:对大型数据库的面部表示和验证的判别色彩空间方法

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In a wide range of color-related computer vision applications, researchers tried to select one of the conventional color spaces as the optimum one. This paper, however, addresses the problem of how to learn an optimum color space from the given training sample set. We seek a set of optimal coefficients to combine the R, G and B components based on a discriminant criterion and then gain one discriminant color component for representing color image for recognition purposes. Further, we can obtain three sets of optimal combination coefficients and use them to generate a three-dimensional discriminant color space (DCS). The proposed DCS method was assessed on Experiment 4 of the Face Recognition Grand Challenge (FRGC) database and the experimental results show the proposed discriminant color space significantly outperforms the RGB and Ig(r-g) color spaces.
机译:在各种颜色相关的计算机视觉应用中,研究人员试图选择作为最佳颜色空间之一作为最佳颜色空间。然而,本文解决了如何从给定的训练样本集中学习最佳颜色空间的问题。我们寻求基于判别标准将R,G和B分量组合的一组最佳系数,然后获得用于表示彩色图像的一个判别颜色分量以用于识别目的。此外,我们可以获得三组最佳组合系数,并使用它们来产生三维判别颜色空间(DCS)。所提出的DCS方法在面部识别大挑战(FRGC)数据库的实验4上进行评估,实验结果表明所提出的判别色彩空间显着优于RGB和IG(R-G)颜色空间。

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