Trajectory generation for myoelectrically controlled lower limb active knee exoskeleton

A. S. Kundu, O. Mazumder, Ritwik Chattaraj, S. Bhaumik, P. Lenka
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引用次数: 14

Abstract

Aim of this paper is to generate joint angle trajectory of knee joint and fed it to a myoelectric controlled lower body exoskeleton to regenerate lost gait pattern. EMG signal of six different lower limb muscles has been acquired and fused using standard fusion technique discarding spurious data. From the fused EMG data, different gait parameters like stride time, gait phase etc has been calculated. Joint trajectory during a gait cycle is obtained from Kinect sensor that can extract comprehensive gait information from all parts of the body. Joint angle obtained from kinect is combined with the gait parameters acquired from EMG and together they will be fed to a robotic lower limb exoskeleton. As the exoskeleton joints are fed with true joint angle data of the user and the joints are driven by users own intention signal, functioning, control and acceptability of the exoskeleton device is much more to a 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.
肌电控制下肢活动膝关节外骨骼的轨迹生成
本文的目的是生成膝关节的关节角度轨迹,并将其输入到肌电控制的下体外骨骼中,以恢复丢失的步态模式。采用标准的融合技术对六块不同下肢肌肉的肌电信号进行融合,去除假数据。从融合的肌电数据中,计算出不同的步态参数,如步幅时间、步态相位等。步态周期中的关节轨迹由Kinect传感器获取,Kinect传感器可以从身体的各个部位提取全面的步态信息。从kinect获得的关节角度与从肌电图获得的步态参数相结合,并将它们一起馈送到机器人下肢外骨骼。由于外骨骼关节输入的是用户真实的关节角度数据,并且关节是由用户自己的意愿信号驱动的,因此外骨骼设备的功能、控制和可接受性对用户来说要大得多。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。
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