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Combined shape analysis of human poses and motion units for action segmentation and recognition

机译:人体姿势和运动单元的组合形状分析,用于动作分割和识别

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Recognizing human actions or analyzing human behaviors from 3D videos is an important problem currently investigated in many research domains. The high complexity of human motions and the variability of gesture combinations make this task challenging. Local (over time) analysis of a sequence is often necessary in order to have a more accurate and thorough understanding of what the human is doing. In this paper, we propose a method based on the combination of pose-based and segment-based approaches in order to segment an action sequence into motion units (MUs). We jointly analyze the shape of the human pose and the shape of its motion using a shape analysis framework that represents and compares shapes in a Riemannian manifold. On one hand, this allows us to detect periodic MUs and thus perform action segmentation. On another hand, we can remove repetitions of gestures in order to handle with failure cases for the task of action recognition. Experiments are performed on three representative datasets for the task of action segmentation and action recognition. Competitive results with state-of-the-art methods are obtained in both the tasks.
机译:从3D视频识别人类行为或分析人类行为是当前在许多研究领域中研究的重要问题。人体运动的高度复杂性和手势组合的可变性使这项任务具有挑战性。为了更准确,透彻地了解人类的行为,通常需要对序列进行局部(随时间变化)分析。在本文中,我们提出了一种基于姿势和基于片段的方法相结合的方法,以便将动作序列划分为运动单元(MU)。我们使用一个表示和比较黎曼流形中的形状的形状分析框架来共同分析人体姿势的形状及其运动的形状。一方面,这使我们能够检测周期性MU,从而执行动作分段。另一方面,我们可以删除重复的手势,以处理动作识别任务失败的情况。针对动作分割和动作识别的任务,在三个代表性的数据集上进行了实验。在这两个任务中都获得了使用最新技术的竞争结果。

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