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Fast kernel Fisher discriminant analysis via approximating the kernel principal component analysis

机译:通过近似内核主成分分析进行快速的Fisher Fisher判别分析

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Kernel Fisher discriminant analysis (KFDA) extracts a nonlinear feature from a sample by calculating as many kernel functions as the training samples. Thus, its computational efficiency is inversely proportional to the size of the training sample set. In this paper we propose a more approach to efficient nonlinear feature extraction, FKFDA (fast KFDA). This FKFDA consists of two parts. First, we select a portion of training samples based on two criteria produced by approximating the kernel principal component analysis (AKPCA) in the kernel feature space. Then, referring to the selected training samples as nodes, we formulate FKFDA to improve the efficiency of nonlinear feature extraction. In FKFDA, the discriminant vectors are expressed as linear combinations of nodes in the kernel feature space, and the extraction of a feature from a sample only requires calculating as many kernel functions as the nodes. Therefore, the proposed FKFDA has a much faster feature extraction procedure compared with the naive kernel-based methods. Experimental results on face recognition and benchmark datasets classification suggest that the proposed FKFDA can generate well classified features.
机译:费舍尔判别分析(KFDA)通过计算与训练样本一样多的核函数从样本中提取非线性特征。因此,其计算效率与训练样本集的大小成反比。在本文中,我们提出了一种更有效的非线性特征提取方法,即FKFDA(快速KFDA)。该FKFDA由两部分组成。首先,我们根据两个标准选择一部分训练样本,这两个标准是通过近似核特征空间中的核主成分分析(AKPCA)产生的。然后,以选定的训练样本为节点,制定FKFDA,以提高非线性特征提取的效率。在FKFDA中,判别向量表示为内核特征空间中节点的线性组合,从样本中提取特征仅需要计算与节点一样多的内核函数。因此,与基于朴素内核的方法相比,所提出的FKFDA具有更快的特征提取过程。关于面部识别和基准数据集分类的实验结果表明,所提出的FKFDA可以生成分类良好的特征。

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