Automated detection of similar human actions using motion descriptors

Ammar Ladjailia, Imed Bouchrika, H. Merouani, Nouzha Harrati
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引用次数: 6

Abstract

As computing becomes ubiquitous in our modern society, automated recognition of human activities emerges as a crucial topic where it can be applied to many real-life human-centric scenarios such as smart automated surveillance, human computer interaction and automated refereeing. In this research study, a motion descriptor is constructed based on the extraction of optical flow features across consecutive frames for the classification of human activities. A histogram of features is derived from images taking into account the solely local properties embedded within the motion map. Feature selection which is based on the proximity of instances belonging to the same class is performed to obtain the most distinctive features. Experimental results carried out on the Weizmann dataset confirmed the potency for the proposed method with a high recognition rate of 95.02 % to distinguish between different basic human action classes such as running, walking, waving and jumping. The dataset is made of 19 basic actions for 9 different subjects. Further experiments are conducted to assess the ability of the proposed approach to recognize similar actions based on the intra and inter class distribution analysis.
使用动作描述符自动检测相似的人类动作
随着计算机在现代社会的普及,人类活动的自动识别成为一个重要的话题,它可以应用于许多以人类为中心的现实生活场景,如智能自动监控、人机交互和自动裁判。在本研究中,基于提取连续帧的光流特征构建运动描述子,用于人类活动的分类。特征的直方图是从考虑到嵌入在运动地图中的单独的局部属性的图像中导出的。基于同一类实例的接近度进行特征选择,以获得最显著的特征。在Weizmann数据集上进行的实验结果证实了该方法在区分不同的基本人类动作类别(如跑步、行走、挥舞和跳跃)方面的有效性,识别率高达95.02%。该数据集由9个不同主题的19个基本动作组成。我们进行了进一步的实验来评估基于类内和类间分布分析的方法识别相似动作的能力。
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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