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Uncorrelated discriminant simplex analysis for view-invariant gait signal computing

机译:视相关步态信号计算的不相关判别单纯形分析

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摘要

Human gait is a useful biometric signature and has recently gained growing interest from computer vision researchers. This interest is strongly driven by the need for automatic human identification and gender recognition at a distance in many surveillance applications. Existing human gait analysis methods, however, are sensitive to the view of the gait sequences, and their performances are poor when the view of the training gait sequences is different from that of the testing ones. In this paper, we propose a new supervised manifold learning algorithm, called uncorrelated discriminant simplex analysis (UDSA), for view-invariant gait signal computing. The aim of UDSA is to seek a mapping to project human gait sequences collected from different views into a low-dimensional feature subspace, such that intraclass geometrical structures are preserved and interclass distances of gait sequences are maximized simultaneously. Moreover, we impose an uncorrelated constraint to make the extracted features statistically uncorrelated. Experimental results are presented to demonstrate the efficacy of the proposed approach.
机译:人的步态是一种有用的生物识别特征,近来,计算机视觉研究人员越来越感兴趣。在许多监视应用中,人们对自动识别和性别识别的需求强烈推动了这种兴趣。然而,现有的人类步态分析方法对步态序列的看法敏感,并且当训练步态序列的看法与测试步态的看法不同时,它们的性能很差。在本文中,我们提出了一种新的监督流形学习算法,称为不相关判别单纯形分析(UDSA),用于视图不变步态信号计算。 UDSA的目的是寻求一种映射,以将从不同视图收集的步态序列投影到低维特征子空间中,从而保留类内的几何结构并同时最大化步态序列的类间距离。此外,我们施加了不相关的约束,以使提取的特征在统计上不相关。实验结果表明该方法的有效性。

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