用惯性和磁传感器捕获和分析生物力学信号,作为物理康复过程的支持

M. C. Cuervo, J. C. Álvarez, D. Álvarez
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引用次数: 13

摘要

本文介绍了一种用于捕获上肢生物力学信号的工具。本文还介绍了数据采集、信号融合和关节振幅测量、肘关节屈伸和旋前的方法。为了实现这一目标,一个使用两个固定在手臂和前臂身体部分的惯性和磁性传感器的装置被实现。这些传感器与控制单元相连,控制单元对传感器进行处理,并通过无线通信协议将信息发送到显示设备。这个过程可以实时完成,也可以在以后存储和管理结果。将该装置应用于工业机械臂上,并与实际旋转值进行了比较。实验显示,屈伸时RMSE为2.19°,旋前/旋后为2.75°。综上所述,该系统具有可接受的精度水平,可作为轻度运动损伤患者康复过程中的辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capture and analysis of biomechanical signals with inertial and magnetic sensors as support in physical rehabilitation processes
A tool used to capture biomechanical signals from the upper limb is presented here. The methods used for data acquisition, signal fusion and joint amplitude measurements, elbow flexion/extension and pronation/supination, are also presented. To that aim, a device using two inertial and magnetic sensors fixed to the arm and the forearm body segments was implemented. These sensors are wired to a control unit, which process them and sends the information to a display device through a wireless communication protocol. This process can be done in real time, or the results can be stored and managed later. This device was applied to an industrial robot arm, and the results were compared to the actual rotation values. Experiments showed a RMSE of 2.19° in flexion/extension and of 2.75° in pronation/supination. As a conclusion, it can be claimed that the system has an acceptable level of precision to be used as a support tool in rehabilitation processes of people with slight motor damages.
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