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Human activity classification based on gait and support vector machines.

机译:基于步态和支持向量机的人类活动分类。

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Presented is a method to characterize human gait and to classify human activities using gait. Slices along the x-t dimension of a patio-temporal sequence are extracted to construct a gait double helical signature (gait DHS). A DHS pattern is a compact description that encodes the parameters of human gait and shows inherent symmetry in natural walking (without encumbered limb movement). The symmetry takes the form of Frieze groups, and differences in DHS symmetry can classify different activities. This thesis presents a method for extracting gait DHS, and how the DHS can be separable by activity. Then, a Support Vector Machine (SVM) n-class classifier is constructed using the Radial Basis Function (RBF) kernel, and the performance is measured on a set of data. The SVM is a classification tool based on learning from a training set, and fitting decision boundaries based on an output function. This thesis examines the elect of slicing at different heights of the body and shows the robustness of DHS to view angle, size, and direction of motion. Experiments using real video sequences are presented.
机译:提出了一种表征人类步态并使用步态对人类活动进行分类的方法。提取沿时空序列的x-t维度的切片,以构建步态双螺旋特征码(步态DHS)。 DHS模式是一个紧凑的描述,它编码人的步态参数并显示自然行走中固有的对称性(无妨碍的肢体运动)。对称性采用Frieze组的形式,DHS对称性的差异可以对不同的活动进行分类。本文提出了一种步态DHS的提取方法,以及如何通过活动将DHS分离。然后,使用径向基函数(RBF)内核构造支持向量机(SVM)n类分类器,并在一组数据上测量性能。 SVM是基于从训练集中学习并基于输出函数拟合决策边界的分类工具。本文研究了在人体不同高度进行切片的选择,并展示了DHS在观察角度,大小和运动方向方面的鲁棒性。提出了使用真实视频序列的实验。

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