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Finding Articulated Body in Time-Series Volume Data

机译:在时间序列体数据中查找铰接体

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摘要

This paper presents a new scheme for acquiring 3D kinematic structure and motion from time-series volume data, in particular, focusing on human body. Our basic strategy is to first represent the shape structure of the target in each frame by using aMRG, augmented Mul-tiresolution Reeb Graph, and then deform each of the shape structures so that all of them can be identified as a common kinematic structure throughout the input frames. Although the shape structures can be very different from frame to frame, we propose to derive a unique kinematic structure by way of clustering some nodes of graph, based on the fact that they are partly coherent. The only assumption we make is that human body can be approximated by an articulated body with certain number of end-points and branches. We demonstrate the efficacy of the proposed scheme through some experiments.
机译:本文提出了一种从时间序列体数据中获取3D运动结构和运动的新方案,特别是关注人体。我们的基本策略是,首先使用aMRG,增强的Mul-tiresolution Reeb图表示每个帧中目标的形状结构,然后变形每个形状结构,以便在整个运动过程中将它们全部识别为共同的运动学结构。输入帧。尽管帧之间的形状结构可能有很大的不同,但是我们建议通过对图的某些节点进行聚类的方式来推导独特的运动学结构,这是因为它们之间是部分连贯的。我们做出的唯一假设是,人体可以被具有一定数量的端点和分支的关节体近似。我们通过一些实验证明了该方案的有效性。

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