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A Kernel Based Neighborhood Discriminant Submanifold Learning for Pattern Classification

机译:基于核的邻域判别子流形学习用于模式分类

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We propose a novel method, called Kernel Neighborhood Discriminant Analysis (KNDA), which can be regarded as a supervised kernel extension of Locality Preserving Projection (LPP). KNDA nonlinearly maps the original data into a kernel space in which two graphs are constructed to depict the within-class submanifold and the between-class submanifold. Then a criterion function which minimizes the quotient between the within-class representation and the between-class representation of the submanifolds is designed to separate each submanifold constructed by each class. The real contribution of this paper is that we bring and extend the submanifold based algorithm to a general model and by some derivation a simple result is given by which we can classify a given object to a predefined class effectively. Experiments on the MNIST Handwritten Digits database, the Binary Alphadigits database, the ORL face database, the Extended Yale Face Database B, and a downloaded documents dataset demonstrate the effectiveness and robustness of the proposed method.
机译:我们提出了一种称为内核邻域判别分析(KNDA)的新方法,该方法可以看作是局部性保留投影(LPP)的有监督的内核扩展。 KNDA将原始数据非线性地映射到内核空间,在该内核空间中构造了两个图来描述类内子流形和类间子流形。然后,设计一个标准函数,该函数将子流形的类内表示和类间表示之间的商最小化,以分隔每个类构造的每个子流形。本文的真正贡献是将基于子流形的算法引入并扩展到通用模型,并通过一些推导给出了一个简单的结果,通过该结果我们可以将给定的对象有效地分类为预定义的类。在MNIST手写数字数据库,二进制字母数字数据库,ORL人脸数据库,扩展耶鲁人脸数据库B和下载的文档数据集上进行的实验证明了该方法的有效性和鲁棒性。

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