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Complete Kernel Fisher discriminant analysis of Gabor features with fractional power polynomial models for face recognition

机译:完整的内核Fisher判别分析Gabor特征与面部识别的分数功率多项式模型

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This paper presents a novel face recognition method based on complete Kernel Fisher discriminant (CKFD) analysis of Gabor features with power polynomial models. By integrating the Gabor wavelet representation of face images and the enhanced powerful discriminator named CKFD analysis, the method is robust to changes in illumination and facial expressions and poses. On the other hand, the extended polynomial Kernels, namely fractional power polynomial (FPP) models, are employed in CKFD analysis, which enhance face recognition performance. Comparing with existing PCA, LDA, KPCA, KFD and CKFD methods, the proposed method gives superior results in the ORL and Yale face databases. Its good performance in the two face databases gives the promising idea to solve the pose, illumination, and expression (PIE) problem of face recognition.
机译:本文提出了一种基于完整内核Fisher判别(CKFD)分析的新型面部识别方法,具有电力多项式模型的Gabor特征。通过集成面部图像的Gabor小波表示和命名为CKFD分析的增强强大的鉴别器,该方法是对照明和面部表情的变化和姿势的变化稳健。另一方面,扩展多项式核,即分数功率多项式(FPP)模型用于CKFD分析,增强了面部识别性能。与现有PCA,LDA,KPCA,KFD和CKFD方法相比,该方法在ORL和YOLE面部数据库中提供了卓越的结果。这两个面部数据库的良好表现使有希望的姿势,照明和表达(馅饼)面部识别问题。

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