Evaluation of Inertial Sensor Fusion Algorithms in Grasping Tasks Using Real Input Data: Comparison of Computational Costs and Root Mean Square Error

Hans-Peter Brückner, Christian Spindeldreier, H. Blume, E. Schoonderwaldt, E. Altenmüller
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引用次数: 20

Abstract

Sensor fusion is an important computation step for acquiring reliable orientation information from inertial sensors. These sensors are very attractive in order to achieve a mobile capturing of human movements, which is desired for application in sports or rehabilitation. Commercial inertial sensors with small form factors and low power consumption can be used for capturing without any interference. There are several common techniques for calculating orientation data based on RAW sensor data. This paper gives an overview of the computational effort and achievable accuracy of integration algorithms, vector observation algorithms and Kalman filter algorithms for inertial sensor fusion. The sensor data were compared against an optical motion capturing system. The considered application is the capturing of arm movements during grasping tasks in stroke rehabilitation. Therefore, the algorithms are evaluated based on corresponding real world input data. The provided benchmark compares the sensor fusion algorithms in terms of computational cost and orientation estimation error.
利用真实输入数据评估惯性传感器融合算法在抓取任务中的应用:计算成本和均方根误差的比较
传感器融合是获取惯性传感器可靠方位信息的重要计算步骤。这些传感器在实现人体运动的移动捕捉方面非常有吸引力,这是在运动或康复应用中所需要的。具有小尺寸和低功耗的商用惯性传感器可用于无任何干扰的捕获。有几种基于RAW传感器数据计算方向数据的常用技术。综述了惯性传感器融合中积分算法、矢量观测算法和卡尔曼滤波算法的计算量和可实现精度。传感器数据与光学运动捕捉系统进行了比较。考虑的应用是捕捉手臂运动期间抓任务在中风康复。因此,算法是基于相应的真实世界输入数据进行评估的。提供的基准比较了传感器融合算法的计算成本和方向估计误差。
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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