基于核的Foley-Sammon变换特征提取

Zhenzhou Chen
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引用次数: 1

摘要

基于Foley-Sammon变换和核技巧,提出了一种带核的Foley-Sammon变换方法KFST。KFST导出的方向上的投影可以用于特定类的特征提取。该算法是在与核函数相关的特征空间中进行的,因此可以用来构造大量的非线性特征提取器。特征空间中的线性特征提取对应于输入空间中的非线性特征提取。证明了KFST对应于一个广义特征值问题。最后,将该方法应用于数字和图像识别问题,实验结果表明,该方法在空间分布和正确分类率方面优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction by Foley-Sammon Transform with Kernels
A method KFST (Foley-Sammon transform with kernels)is proposed which is based on FST (Foley-Sammon transform) and kernel tricks. The projectors onto the directions derived by KFST can be used for class-specific feature extraction. The algorithm is carried out in a feature space associated with kernel functions, hence it can be used to construct a large class of nonlinear feature extractors. Linear feature extraction in feature space corresponds to nonlinear feature extraction in input space. KFST is proven to correspond to a generalized eigenvalue problem. Lastly, our method is applied to digits and images recognition problems, and the experimental results show that present method is superior to the existing methods in term of space distribution and correct classification rate.
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