Real-time human body motion estimation based on multi-layer laser scans

Wei Wang, D. Brscic, Zhiwei He, S. Hirche, K. Kühnlenz
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引用次数: 5

Abstract

Real time human body motion estimation plays an important role in the perception for robotics nowadays, especially for the applications of human robot interaction and service robotics. In this paper, we propose a method for real-time 3D human body motion estimation based on 3-layer laser scans. All the useful scanned points, presenting the human body contour information, are subtracted from the learned background of the environment. For human contour feature extraction, in order to avoid the situations of unsuccessful segmentation, we propose a novel iterative template matching algorithm for clustering, where the templates of torso and hip sections are modeled with different radii. Robust distinct human motion features are extracted using maximum likelihood estimation and nearest neighbor clustering method. Subsequently, the positions of human joints in 3D space are retrieved by associating the extracted features with a pre-defined articulated model of human body. Finally we demonstrate our proposed methods through experiments, which show accurate human body motion tracking in real time.
基于多层激光扫描的实时人体运动估计
人体运动的实时估计在机器人感知中起着重要的作用,特别是在人机交互和服务机器人的应用中。本文提出了一种基于三层激光扫描的实时三维人体运动估计方法。从学习到的环境背景中减去所有表示人体轮廓信息的有用扫描点。对于人体轮廓特征提取,为了避免分割不成功的情况,我们提出了一种新的迭代模板匹配算法进行聚类,其中躯干和臀部部分的模板以不同的半径建模。采用最大似然估计和最近邻聚类方法提取鲁棒的人体运动特征。随后,通过将提取的特征与预定义的人体关节模型相关联来检索人体关节在三维空间中的位置。最后通过实验验证了所提出的方法,实现了对人体运动的实时准确跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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