Hybrid Rehabilitation System with Motion Estimation Based on EMG Signals.

Kensuke Takenaka, Keisuke Shima, Koji Shimatani
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Abstract

Patients with upper limb paralysis undergo various types of rehabilitation to reconstruct upper limb functions necessary for their return to daily life and social activities. Therefore, it is necessary to develop an effective rehabilitation support system using robotic technologies. In this study, we propose an EMG-driven hybrid rehabilitation system based on the estimation of intended motion using a probabilistic neural network. In the proposed system, the developed robot and functional electrical stimulation are controlled by estimating the patient's intention, which enables the intuitive learning of the appropriate control abilities of joint motions and muscle contraction patterns. In the experiments, hybrid and visual feedback training were conducted for pointing movements of the wrist joint of the non-dominant hand. The results confirmed that the proposed method provides effective training and has great potential for use in rehabilitation.

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基于肌电信号的运动估计混合康复系统。
上肢瘫痪患者接受各种类型的康复,以重建他们恢复日常生活和社会活动所需的上肢功能。因此,有必要利用机器人技术开发一种有效的康复支持系统。在这项研究中,我们提出了一种基于概率神经网络估计预期运动的肌电驱动混合康复系统。在所提出的系统中,通过估计患者的意图来控制所开发的机器人和功能性电刺激,这使得能够直观地学习关节运动和肌肉收缩模式的适当控制能力。在实验中,对非优势手腕关节的指向运动进行了混合和视觉反馈训练。结果证实,该方法提供了有效的训练,在康复中具有很大的应用潜力。
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