基于表面肌电图(sEMG)的缆索驱动手部康复机器人镜像训练

June-Seok Ma, Rong Mo, Miao Chen, L. Cheng, Hongsheng Qi
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引用次数: 4

摘要

近年来,机器人被广泛用于帮助中风后患者进行康复训练,因为它可以为运动功能恢复提供长期、准确的刺激。然而,如何设计一个有用的机器人,可以帮助患者进行康复训练,如单独的动作,以及如何建立人机交互界面,以增加患者的参与是手部康复机器人具有挑战性的课题。因此,我们设计了一种手部外骨骼机器人,借助一些先进的控制方法,帮助中风后患者进行手部康复训练。该机器人有两个显著特点:1)采用自抗扰控制器对机器人进行控制,以获得更好的控制性能。实验结果表明,该控制器比PID控制器能更好地跟踪参考点,并能抑制干扰;2)建立人机交互界面,进行主动康复控制(镜像训练)。首先,本文利用基于表面肌电信号(sEMG)的反向传播神经网络识别志愿者的运动意图(手势)。然后利用相应的手势识别结果对手外骨骼进行控制。结果表明,康复机器人能够跟随志愿者的运动意图,完成对患者的镜像训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mirror-Training of a Cable- Driven Hand Rehabilitation Robot Based on Surface Electromyography (sEMG)
In recent years, robots are widely used for helping post-stroke patients do rehabilitation training because it can provide long-term, accurate stimulation for motor function recovery. However, how to design a useful robot that can help patients do rehabilitation training such as separate movements and how to establish a human-robot interaction interface to increase the patient's involvement are challenging topics for the hand rehabilitation robot. Therefore, a hand exoskeleton robot has been designed to help the post-stroke patient do hand rehabilitation training with the aid of some advanced control methods. There are two notable features on this robot: 1) the active disturbance rejection controller is utilized to control the robot for a better control performance. Experimental results show that this controller can track the reference better than PID controller and can reject the disturbance as well; and 2) this paper creates a human-robot interaction interface to do active rehabilitation control (mirror-training). Firstly, this paper utilizes the back-propagation neural network to recognize the volunteer's movement intentions (hand gestures) based on surface electromyography (sEMG). Then, the corresponding hand-gesture recognition result is used to control the hand exoskeleton. The result shows that the rehabilitation robot can follow the volunteer's movement intention to fulfill the mirror-training of the patient.
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