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Face recognition based on gradient gabor feature and Efficient Kernel Fisher analysis

机译:基于梯度Gabor特征和高效Kernel Fisher分析的人脸识别

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摘要

In this paper, a new Gradient Gabor (GGabor) filter is proposed to extract multi-scale and multi-orientation features to represent and classify faces. Gradient Gabor filters combine the derivative of Gaussian functions and the harmonic functions to capture the features in both spatial and frequency domains to deliver orientation and scale information. The spatial positions are encoded through using Gaussian derivatives which allow it to provide more stable information. An Efficient Kernel Fisher analysis method is proposed to find multiple subspaces based on both GGabor magnitude and phase features, which is a local kernel mapping method to capture the structure information in faces. The experiments on two face databases, FRGC version 1 and FRGC version 2, are conducted to compare performances of the Gabor and GGabor features. The experiment results show that GGabor yield a powerful tool to model faces, and the Efficient Kernel Fisher classifier can improve the efficiency of the original Kernel Fisher Discriminant analysis method.
机译:本文提出了一种新的梯度Gabor(GGabor)滤波器来提取多尺度和多方位特征来表示和分类人脸。梯度Gabor滤波器结合了高斯函数和谐波函数的导数,以捕获空间和频域中的特征,从而提供方向和比例信息。通过使用高斯导数对空间位置进行编码,从而可以提供更稳定的信息。提出了一种基于GGabor幅值和相位特征的高效核Fisher分析方法,可以找到多个子空间,这是一种用于捕获人脸结构信息的局部核映射方法。在两个面部数据库FRGC版本1和FRGC版本2上进行了实验,以比较Gabor和GGabor特征的性能。实验结果表明,GGabor提供了强大的人脸建模工具,高效的Kernel Fisher分类器可以提高原始Kernel Fisher判别分析方法的效率。

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