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Learning and Matching of Dynamic Shape Manifolds for Human Action Recognition

机译:动态形状流形的学习和匹配,用于人体动作识别

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In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for the task of action recognition. We exploit locality preserving projections (LPP) for dimensionality reduction, leading to a low-dimensional embedding of human movements. Given a sequence of moving silhouettes associated to an action video, by LPP, we project them into a low-dimensional space to characterize the spatiotemporal property of the action, as well as to preserve much of the geometric structure. To match the embedded action trajectories, the median Hausdorff distance or normalized spatiotemporal correlation is used for similarity measures. Action classification is then achieved in a nearest-neighbor framework. To evaluate the proposed method, extensive experiments have been carried out on a recent dataset including ten actions performed by nine different subjects. The experimental results show that the proposed method is able to not only recognize human actions effectively, but also considerably tolerate some challenging conditions, e.g., partial occlusion, low-quality videos, changes in viewpoints, scales, and clothes; within-class variations caused by different subjects with different physical build; styles of motion; etc
机译:在本文中,我们学习运动人类的动态形状流形的显式表示,以用于动作识别任务。我们利用局部性保留投影(LPP)来减少维度,从而导致人类运动的低维嵌入。通过LPP,给定一系列与动作视频相关的运动剪影,我们将它们投影到低维空间中,以表征动作的时空特性,并保留许多几何结构。为了匹配嵌入的动作轨迹,将中值Hausdorff距离或归一化的时空相关性用于相似性度量。然后在最近邻居框架中实现动作分类。为了评估所提出的方法,已对最近的数据集进行了广泛的实验,包括由九个不同主体执行的十个动作。实验结果表明,所提出的方法不仅能够有效地识别人类的行为,而且还可以忍受某些挑战性条件,例如部分遮挡,低质量的视频,视点,比例和衣服的变化;不同学科,不同体格造成的班内变化;运动方式;等等

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