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Facial Texture Feature Based Face Recognition with Common Vector Analysis in the Kernel Space

机译:基于面部纹理的面部识别与内核空间中的常见矢量分析

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A novel face recognition method based on facial texture feature with common vector analysis is presented in this paper. The novelty of this paper comes from 1) facial texture feature characterized by spatial frequency, spatial locality and orientation selectivity to cope with the variations in imumination and facial expressions is extracted by Gabor wavelet, which improves the recognition performance; 2) This paper formulates Cevikalp''s Discriminative Common Vector (DCV) method from space isomorphic mapping view in the kernel-inducing feature space and develops a two-phase algorithm: whitened kernel principal component analysis (KPCA) plus DCV. KPCA spheres data and makes the data structure become as linearly separable as possible by virtue of an implicit nonlinear mapping determined by kernel. Based on the above ideas, we propose a novel face recognition method, namely Kernel Common Gaborfaces method, by extracting the facial texture feature using Gabor wavelet and classification using the proposed kernel common vector analysis algorithm, whose effectiveness is tested on ORL and Yale face databases.
机译:本文提出了一种基于面部纹理特征的新型面部识别方法。本文的新颖性来自1)面部纹理特征,其特征在于空间频率,空间局部和方向选择性,以应对内部的变化,并通过Gabor小波提取的内部表达式,这提高了识别性能; 2)本文从内核诱导特征空间中的空间同构映射视图提供了Cevikalp的判别常见常见载体(DCV)方法,并开发了两相算法:白细胞内核主成分分析(KPCA)加DCV。 KPCA球体数据并使数据结构借助于由内核确定的隐式非线性映射尽可能地线性可分离。基于上述思想,我们提出了一种新颖的面部识别方法,即内核常见的Gaborfaces方法,通过使用Gabor小波和使用所提出的内核常用Vapry算法来提取面部纹理特征,其有效性在ORL和YOLE面部数据库上进行了测试。

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