Adaboost-based algorithm for human action recognition

Nabil Zerrouki, F. Harrou, Ying Sun, A. Houacine
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引用次数: 2

Abstract

This paper presents a computer vision-based methodology for human action recognition. First, the shape based pose features are constructed based on area ratios to identify the human silhouette in images. The proposed features are invariance to translation and scaling. Once the human body features are extracted from videos, different human actions are learned individually on the training frames of each class. Then, we apply the Adaboost algorithm for the classification process. We assessed the proposed approach using the UR Fall Detection dataset. In this study six classes of activities are considered namely: walking, standing, bending, lying, squatting, and sitting. Results demonstrate the efficiency of the proposed methodology.
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基于adaboost的人体动作识别算法
提出了一种基于计算机视觉的人体动作识别方法。首先,基于面积比构造基于形状的姿态特征,识别图像中的人体轮廓;提出的特征是平移和缩放的不变性。从视频中提取人体特征后,在每个类的训练帧上分别学习不同的人体动作。然后,我们应用Adaboost算法进行分类。我们使用UR跌倒检测数据集评估了所提出的方法。在这项研究中考虑了六类活动,即:走路,站立,弯腰,躺着,蹲着和坐着。结果证明了该方法的有效性。
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