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Characterizing Humans on Riemannian Manifolds

机译:在黎曼流形上表征人类

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摘要

In surveillance applications, head and body orientation of people is of primary importance for assessing many behavioral traits. Unfortunately, in this context people are often encoded by a few, noisy pixels so that their characterization is difficult. We face this issue, proposing a computational framework which is based on an expressive descriptor, the covariance of features. Covariances have been employed for pedestrian detection purposes, actually a binary classification problem on Riemannian manifolds. In this paper, we show how to extend to the multiclassification case, presenting a novel descriptor, named weighted array of covariances, especially suited for dealing with tiny image representations. The extension requires a novel differential geometry approach in which covariances are projected on a unique tangent space where standard machine learning techniques can be applied. In particular, we adopt the Campbell-Baker-Hausdorff expansion as a means to approximate on the tangent space the genuine (geodesic) distances on the manifold in a very efficient way. We test our methodology on multiple benchmark datasets, and also propose new testing sets, getting convincing results in all the cases.
机译:在监视应用中,人的头和身体取向对于评估许多行为特征至关重要。不幸的是,在这种情况下,人们通常由一些嘈杂的像素编码,因此很难进行表征。我们面对这个问题,提出了一个基于表达性描述符,特征的协方差的计算框架。协方差已用于行人检测,实际上是黎曼流形上的一个二元分类问题。在本文中,我们展示了如何扩展到多分类的情况,提出了一个新颖的描述符,称为协方差加权数组,特别适合处理微小的图像表示。该扩展需要一种新颖的微分几何方法,其中协方差被投影到可以应用标准机器学习技术的唯一切线空间上。特别是,我们采用Campbell-Baker-Hausdorff展开作为一种以非常有效的方式在切线空间上近似流形上的真实(测地)距离的方法。我们在多个基准数据集上测试了我们的方法,并提出了新的测试集,在所有情况下都获得了令人信服的结果。

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