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Space-Time Pose Representation for 3D Human Action Recognition

机译:用于3D人体动作识别的时空姿势表示

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3D human action recognition is an important current challenge at the heart of many research areas lying to the modeling of the spatio-temporal information. In this paper, we propose representing human actions using spatio-temporal motion trajectories. In the proposed approach, each trajectory consists of one motion channel corresponding to the evolution of the 3D position of all joint coordinates within frames of action sequence. Action recognition is achieved through a shape trajectory representation that is learnt by a K-NN classifier, which takes benefit from Riemannian geometry in an open curve shape space. Experiments on the MSR Action 3D and UTKinect human action datasets show that, in comparison to state-of-the-art methods, the proposed approach obtains promising results that show the potential of our approach.
机译:3D人体动作识别是当前时空信息的重要挑战,这是许多研究时空信息建模的核心。在本文中,我们建议使用时空运动轨迹来表示人类动作。在提出的方法中,每个轨迹由一个运动通道组成,该运动通道对应于动作序列帧内所有关节坐标的3D位置的演变。通过K-NN分类器学习的形状轨迹表示法来实现动作识别,该方法利用了在开放曲线形状空间中的黎曼几何学所带来的好处。在MSR Action 3D和UTKinect人类行为数据集上进行的实验表明,与最先进的方法相比,该方法获得了有希望的结果,表明了我们方法的潜力。

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