Human Motion Recognition Using Clay Representation of Trajectories

Yu-Chun Lai, H. Liao
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引用次数: 5

Abstract

In this paper, we propose a novel human motion recognition approach that incorporates two fundamental concepts. First, the Shape Context and a clustering method are used to extract moving articulated parts from a video sequence. Then, we represent the moving articulated parts by trajectories. Our trajectory extraction approach provides good tolerance under various background and lighting conditions. Significantly, landmark point selection is not necessary in our approach, since trajectory generation is based on the extraction of moving articulated parts. The second concept is that the extracted trajectories are seen as forces pushing the articulated parts. Those forces are applied to a clay-like deformed material, which is used to represent the trajectories¿ behavior. The experiment results show that the proposed approach is robust against noise and incorrectly extracted trajectories, such as redundant and missing trajectories.
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利用轨迹的粘土表示进行人体运动识别
在本文中,我们提出了一种新的人体运动识别方法,该方法结合了两个基本概念。首先,使用形状上下文和聚类方法从视频序列中提取运动铰接部件。然后,我们用轨迹来表示运动的铰接部件。我们的轨迹提取方法在各种背景和光照条件下都具有良好的容忍度。值得注意的是,在我们的方法中不需要选择地标点,因为轨迹生成是基于提取运动的铰接部件。第二个概念是,提取的轨迹被视为推动铰接部件的力。这些力被施加到一种粘土状的变形材料上,这种材料被用来表示轨迹的行为。实验结果表明,该方法对噪声和错误提取的轨迹(如冗余轨迹和缺失轨迹)具有较强的鲁棒性。
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