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Classification via Semi-Riemannian Spaces

机译:通过半riemannian空间进行分类

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摘要

In this paper, we develop a geometric framework for linear or nonlinear discriminant subspace learning and classification. In our framework, the structures of classes are conceptualized as a semi-Riemannian manifold which is considered as a submanifold embedded in an ambient semi-Riemannian space. The class structures of original samples can be characterized and deformed by local metrics of the semi-Riemannian space. Semi-Riemannian metrics are uniquely determined by the smoothing of discrete functions and the nullity of the semi-Riemannian space. Based on the geometrization of class structures, optimizing class structures in the feature space is equivalent to maximizing the quadratic quantities of metric tensors in the semi-Riemannian space. Thus supervised discriminant subspace learning reduces to unsupervised semi-Riemannian manifold learning. Based on the proposed framework, a novel algorithm, dubbed as Semi-Riemannian Discriminant Analysis (SRDA), is presented for subspace-based classification. The performance of SRDA is tested on face recognition (singular case) and handwritten capital letter classification (nonsingular case) against existing algorithms. The experimental results show that SRDA works well on recognition and classification, implying that semi-Riemannian geometry is a promising new tool for pattern recognition and machine learning.
机译:在本文中,我们开发了线性或非线性判别子空间学习和分类的几何框架。在我们的框架中,类的结构被概念化为半riemannian歧管,被认为是嵌入在环境半riemannian空间中的子植物。原始样品的阶级结构可以通过半riemannian空间的局部度量来表征和变形。半riemannian度量通过离散功能的平滑和半riemannian空间的无效唯一确定。基于类结构的几何化,特征空间中的优化类结构相当于最大化半riemannian空间中的公制张量的二次数量。因此,监督判别子空间学习减少了无监督的半riemananian流形学习。基于所提出的框架,一种新的算法,被称为半riemannian判别分析(SRDA),用于基于子空间的分类。 SRDA的性能在面部识别(奇异案例)上进行测试,并对现有算法进行手写的大写字母分类(非法案例)。实验结果表明,SRDA在识别和分类上运行良好,这意味着半riemananian几何形状是一个有希望的模式识别和机器学习的新工具。

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