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Multiple Face Model of Hybrid Fourier Feature for Large Face Image Set

机译:大面镜套装混合傅立叶特征的多面模型

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The face recognition system based on the only single classifier considering the restricted information can not guarantee the generality and superiority of performances in a real situation. To challenge such problems, we propose the hybrid Fourier features extracted from different frequency bands and multiple face models. The hybrid Fourier feature comprises three different Fourier domains; merged real and imaginary components, Fourier spectrum and phase angle. When deriving Fourier features from three Fourier domains, we define three different frequency bandwidths, so that additional complementary features can be obtained. After this, they are individually classified by Linear Discriminant Analysis. This approach makes possible analyzing a face image from the various viewpoints to recognize identities. Moreover, we propose multiple face models based on different eye positions with a same image size, and it contributes to increasing the performance of the proposed system. We evaluated this proposed system using the Face Recognition Grand Challenge (FRGC) experimental protocols known as the largest data sets available. Experimental results on FRGC version 2.0 data sets has proven that the proposed method shows better verification rates than the baseline of FRGC on 2D frontal face images under various situations such as illumination changes, expression changes, and time elapses.
机译:基于唯一的单个分类器的面部识别系统考虑受限制的信息,不能保证在真实情况下的普遍性和性能的优越性。为了挑战这些问题,我们提出了从不同频带和多面模型提取的混合傅里叶功能。混合傅里叶特征包括三个不同的傅立叶结构;合并实部和虚部组件,傅里叶频谱和相位角。当从三个傅里叶域中导出傅里叶功能时,我们定义了三个不同的频率带宽,从而可以获得额外的互补特征。在此之后,它们通过线性判别分析单独分类。这种方法可以从各种视点分析面部图像来识别标识。此外,我们提出了基于具有相同图像尺寸的不同眼位置的多个面部模型,有助于提高所提出的系统的性能。我们使用称为可用的最大数据集的面部识别大挑战(FRGC)实验协议评估了这一提出的系统。 FRGC版本2.0数据集的实验结果证明,该方法在各种情况下,所提出的方法显示比FRGC上的FRGC的基线更好的验证率,例如照明变化,表达式变化和时间过去。

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