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Human gait recognition using localized Grassmann mean representatives with partial least squares regression

机译:使用局部最小二乘回归的局部Grassmann均值代表进行人的步态识别

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摘要

Gait recognition has become popular due to the rising demand for nonintrusive biometrics. At its nascent stage of development, gait recognition faces a number of challenges. The performance of a gait recognition system is sensitive towards factors like viewing angle, clothing, shoe type, load carriage and speed changes. In this paper, the problems of gait are formulated on the Grassmann manifold. It is not difficult to obtain multiple snapshots of a walking subjects with the wide availability of camera networks. These sets of images can be modelled as low-dimensional subspaces, which can be realized naturally as points on the Grassmann manifold. Modelling image sets as low-dimensional subspaces provides not only possible clue of one's gait, but also the common patterns of variation in the set. We present a method called Localized Grassmann Mean Representatives with Partial Least Squares Regression (LoGPLS) to infer a low-dimensional Euclidean approximation of the manifold. The notion of local mean representatives is introduced to construct multiple tangent spaces to better approximate the topological structure of the manifold. As the properties of the tangent spaces allows the Grassmann points to be evaluated in the vector space, partial least squares is applied to allow a more accurate classification of the points in a reduced space. Experiments have been conducted on four different publicly available gait databases. Empirical evidences demonstrate the effectiveness of the proposed approach in solving the various covariates in gait recognition.
机译:由于对非侵入式生物识别技术的需求不断增长,因此步态识别已变得很流行。在步态识别的发展初期,它面临着许多挑战。步态识别系统的性能对诸如视角,衣服,鞋子类型,载重和速度变化等因素敏感。本文在格拉斯曼流形上提出了步态问题。利用摄像机网络的广泛可用性,获取步行对象的多个快照并不困难。这些图像集可以建模为低维子空间,可以自然地实现为格拉斯曼流形上的点。将图像集建模为低维子空间,不仅提供了一个人的步态的可能线索,而且还提供了图像集变化的常见模式。我们提出了一种称为偏最小二乘回归(LoGPLS)的局限化格拉斯曼均值表示方法,以推断流形的低维欧几里得逼近。引入局部均值代表的概念来构造多个切线空间,以更好地近似流形的拓扑结构。由于切线空间的属性允许在向量空间中评估格拉斯曼点,因此应用局部最小二乘以在缩小的空间中对点进行更准确的分类。在四个不同的公开步态数据库上进行了实验。经验证据证明了该方法在解决步态识别中各种协变量方面的有效性。

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