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Color component feature selection in feature-level fusion based color face recognition

机译:基于特征级融合的颜色面部识别中的颜色分量特征选择

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In this paper, we propose a new color face recognition (FR) method which effectively employs feature selection algorithm in order to find the set of optimal color components (from various color models) for FR purpose. The proposed FR method is also designed to improve FR accuracy by combining the selected color components at the feature level. The effectiveness of the proposed color FR method has been successfully demonstrated using two public CMU-PIE and Color FERET face databases (DB). In our comparative experiments, traditional grayscale-based FR, previous color-based FR, and popular local binary pattern (LBP) based FR methods were compared with the proposed method. Experimental results show that our color FR method performs better than the aforementioned three different FR approaches. In particular, the proposed method can achieve 7.81% and 18.57% improvement in FR performance on the CMU-PIE and Color FERET DB, respectively, compared to representative color-based FR solutions previously developed.
机译:在本文中,我们提出了一种新的颜色面部识别(FR)方法,有效采用特征选择算法,以便找到FR目的的最佳颜色组件(来自各种颜色模型)的集合。所提出的FR方法还设计用于通过在特征级别组合所选择的颜色分量来提高FR精度。使用两种公共CMU-PIE和彩色机构面部数据库(DB)成功地证明了所提出的颜色FR方法的有效性。在我们的比较实验中,将基于灰度的FR,以前的基于颜色的FR和流行的局部二进制图案(LBP)与所提出的方法进行比较。实验结果表明,我们的颜色FR方法比上述三种不同的方法更好地执行。特别是,与先前显影的代表性的颜色的FR溶液相比,该方法分别在CMU-PID和Coloret DB上的提高7.81%和18.57%的提高。

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