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首页> 外文期刊>EURASIP journal on advances in signal processing >Marker-based human motion capture in multiview sequences
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Marker-based human motion capture in multiview sequences

机译:多视图序列中基于标记的人类动作捕捉

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摘要

This paper presents a low-cost real-time alternative to available commercial human motion capture systems. First, a set of distinguishable markers are placed on several human body landmarks, and the scene is captured by a number of calibrated and synchronized cameras. In order to establish a physical relation among markers, a human body model is defined. Markers are detected on all camera views and delivered as the input of an annealed particle filter scheme where every particle encodes an instance of the pose of the body model to be estimated. Likelihood between particles and input data is performed through the robust generalized symmetric epipolar distance and kinematic constrains are enforced in the propagation step towards avoiding impossible poses. Tests over the HumanEva annotated data set yield quantitative results showing the effectiveness of the proposed algorithm. Results over sequences involving fast and complex motions are also presented.
机译:本文提出了一种低成本的实时替代方案,可替代现有的商用人体运动捕捉系统。首先,将一组可区分的标记放置在几个人体地标上,并使用许多经过校准和同步的摄像机捕获场景。为了建立标记之间的物理关系,定义了人体模型。在所有摄像机视图上都检测到标记,并将其作为退火粒子过滤器方案的输入进行传递,其中每个粒子都编码要估计的人体模型的姿态实例。粒子和输入数据之间的似然性通过鲁棒的广义对称对极距离来实现,并且在传播步骤中施加了运动学约束,从而避免了不可能的姿势。对HumanEva注释数据集进行的测试得出了定量结果,这些结果表明了所提出算法的有效性。还介绍了涉及快速和复杂运动的序列结果。

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