基于多通道融合肌电图与虚拟现实的生物反馈步态康复系统

Karnika Biswas, O. Mazumder, A. S. Kundu
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引用次数: 20

摘要

本文的目的是利用虚拟现实平台开发一种基于肌电图的生物反馈系统,以帮助步态康复。研制了一种低功率多通道肌电信号采集装置,用于采集下肢六块不同肌肉的肌电信号。采用贝叶斯融合技术对不同通道的肌电信号进行融合,消除了杂散数据。从融合的肌电图数据中计算不同的步态参数,如步幅时间、步态相位等。获得步态周期内的关节运动轨迹,并将其数字化,并与肌电图获取的步态参数相结合。它们一起被输入到一个虚拟现实人体模型中。就像一个人走路一样,同样的肌电图和轨迹数据被输入到模型中,它也会模仿用户的步态,以同样的速度行走,从而为用户提供生物反馈。该系统在脑卒中后患者、脑瘫等神经肌肉步态缺陷患者、截肢者等的步态康复中有着广泛的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multichannel fused EMG based biofeedback system with virtual reality for gait rehabilitation
Aim of this paper is to develop an EMG based biofeedback system using a virtual reality platform which will help in gait rehabilitation. A low power multichannel EMG acquisition unit has been developed to acquire EMG of six different muscles of the lower limb. EMG from different channels are fused using Bayesian fusion technique and spurious data has been discarded. From the fused EMG data, we calculate different gait parameters like stride time, gait phase etc. Joint trajectory during a gait cycle is obtained, digitized and combined with the gait parameters acquired from EMG. Together they are fed to a VR human model. Just like a person walks, the same EMG and trajectory data being fed to the model, it walks too mimicking the gait of the user, with the same speed, thus providing biofeedback to the user. The system has massive application in gait rehabilitation for post-stroke patients, people suffering from cerebral palsy and other neuro muscular gait defects, amputees etc.
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