Using egocentric vision to achieve robust inertial body tracking under magnetic disturbances

G. Bleser, Gustaf Hendeby, M. Miezal
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引用次数: 40

Abstract

In the context of a smart user assistance system for industrial manipulation tasks it is necessary to capture motions of the upper body and limbs of the worker in order to derive his or her interactions with the task space. While such capturing technology already exists, the novelty of the proposed work results from the strong requirements of the application context: The method should be flexible and use only on-body sensors, work accurately in industrial environments that suffer from severe magnetic disturbances, and enable consistent registration between the user body frame and the task space. Currently available systems cannot provide this. This paper suggests a novel egocentric solution for visual-inertial upper-body motion tracking based on recursive filtering and model-based sensor fusion. Visual detections of the wrists in the images of a chest-mounted camera are used as substitute for the commonly used magnetometer measurements. The on-body sensor network, the motion capturing system, and the required calibration procedure are described and successful operation is shown in a real industrial environment.
利用自中心视觉实现磁干扰下的鲁棒惯性体跟踪
在工业操作任务的智能用户辅助系统的背景下,有必要捕获工人的上半身和四肢的运动,以便派生他或她与任务空间的交互。虽然这种捕获技术已经存在,但所提出的工作的新颖性来自于应用环境的强烈要求:该方法应该是灵活的,只使用身体上的传感器,在遭受严重磁干扰的工业环境中准确工作,并在用户身体框架和任务空间之间实现一致的注册。当前可用的系统无法提供此功能。提出了一种基于递归滤波和基于模型的传感器融合的视觉惯性上体运动跟踪自中心算法。在安装在胸前的相机图像中对手腕的视觉检测被用来代替常用的磁力计测量。描述了人体传感器网络、运动捕捉系统和所需的校准程序,并在实际工业环境中成功运行。
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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