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Comparison of Kernel Class-dependence Feature Analysis (KCFA) with Kernel Discriminant Analysis (KDA) for Face Recognition

机译:内核类依赖性特征分析(KCFA)与核心判别分析(KDA)对面部识别的比较

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Kernel methods have been applied to many linear feature analysis classifiers to generate nonlinear classifiers for improved classification performance. The recently proposed kernel class-dependence feature analysis (KCFA) method extends linear correlation filter technology to kernel correlation filters, greatly improving the classification performance. In this paper, we compare the KCFA method with the kernel discriminant analysis (KDA) method and show that the KCFA and the KDA result in the same representation subspace and the relationship between them is similar to the relationship between the orthogonal and the simplex signal representations in digital communications. We present face recognition results to illustrate that the KCFA method is preferable to the KDA method.
机译:已将内核方法应用于许多线性特征分析分类器,以生成非线性分类器,以改善分类性能。最近提出的内核类依赖性特征分析(KCFA)方法将线性相关滤波技术扩展到内核相关滤波器,大大提高了分类性能。在本文中,我们将KCFA方法与内核判别分析(KDA)方法进行比较,并表明KCFA和KDA在相同的表示子空间中产生,它们之间的关系类似于正交和单纯x信号表示之间的关系在数字通信中。我们呈现面部识别结果,以说明KCFA方法优于KDA方法。

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