Unsupervised motion classification by means of efficient feature selection and tracking

A. Sappa, Niki Aifanti, S. Malassiotis, M. Strintzis
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引用次数: 5

Abstract

We present an efficient technique for human motion recognition; in particular, it is focused on labeling a movement as a walking or running displacement, which are the most frequent type of locomotion. The proposed technique consists of two stages and is based on the study of feature points' trajectories. The first stage detects peaks and valleys of points' trajectories, which are used on the second stage to discern whether the movement corresponds to a walking or a running displacement. Prior knowledge of human body kinematics structure together with the corresponding motion model are the basis for the motion recognition. Experimental results with different video sequences are presented.
基于高效特征选择和跟踪的无监督运动分类
提出了一种高效的人体运动识别技术;特别是,它专注于将运动标记为步行或跑步位移,这是最常见的运动类型。该方法基于对特征点轨迹的研究,分为两个阶段。第一阶段检测点轨迹的波峰和波谷,这在第二阶段用于识别运动是否对应于步行或跑步位移。人体运动学结构的先验知识和相应的运动模型是运动识别的基础。给出了不同视频序列下的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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