基于多人视觉的无标记人体动作捕捉头部检测器

Charence Wong, Zhiqiang Zhang, S. McKeague, Guang-Zhong Yang
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引用次数: 4

摘要

在工作场所普遍的人体动作捕捉有助于详细分析个体主体的行动和团队互动。它对评估仪器设计和工作流程分析的人体工程学研究也很重要。然而,一个繁忙的、动态的、基于团队的环境,如手术室,对目前使用的基于标记和基于传感器的运动捕捉系统提出了许多挑战。遮挡和传感器漂移会影响估计运动的准确性。在本文中,我们提出了一种运动捕捉系统,该系统使用基于视觉的头部检测算法和无标记惯性运动捕捉来估计多人的运动。将惯性传感器获得的姿态估计与基于视觉跟踪获得的位置相结合,重建每个目标的运动。采用多目标卡尔曼滤波来跟踪每个目标的运动。为了处理受试者的近距离,使用与身体相关的视觉特征进行数据关联。实验结果证明了该系统的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-person vision-based head detector for markerless human motion capture
Pervasive human motion capture in the workplace facilitates detailed analysis of the actions of individual subjects and team interaction. It is also important for ergonomic studies for assessing instrument design and workflow analysis. However, a busy, dynamic, team-based environment, such as the operating theatre poses a number of challenges for the currently used marker-based and sensor-based motion capture systems. Occlusions and sensor drift can affect the accuracy of the estimated motion. In this paper, we present a motion capture system that uses a vision-based head detection algorithm and a markerless inertial motion capture for estimating the motion of multiple people. The pose estimation obtained through inertial sensors is combined with location obtained through vision-based tracking to reconstruct the motion of each subject. A multi-target Kalman filter is used to track the movement of each subject. To handle the close proximity of the subjects, visual features associated with the body are used for data association. Experimental results demonstrate the accuracy of the proposed system.
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