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SVM-Based Classification of sEMG Signals for Upper-Limb Self-Rehabilitation Training

机译:基于SVM的sEMG信号分类用于上肢自我康复训练

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摘要

Robot-assisted rehabilitation is a growing field that can provide an intensity, quality, and quantity of treatment that exceed therapist-mediated rehabilitation. Several control algorithms have been implemented in rehabilitation robots to develop a patient-cooperative strategy with the capacity to understand the intention of the user and provide suitable rehabilitation training. In this paper, we present an upper-limb motion pattern recognition method using surface electromyography (sEMG) signals with a support vector machine (SVM) to control a rehabilitation robot, ReRobot, which was built to conduct upper-limb rehabilitation training for post-stroke patients. For poststroke rehabilitation training using the ReRobot, the upper-limb motion of the patient's healthy side is first recognized by detecting and processing the sEMG signals; then, the ReRobot assists the impaired arm in conducting mirror rehabilitation therapy. To train and test the SVM model, five healthy subjects participated in the experiments and performed five standard upper-limb motions, including shoulder flexion, abduction, internal rotation, external rotation, and elbow joint flexion. Good accuracy was demonstrated in experimental results from the five healthy subjects. By recognizing the model motion of the healthy side, the rehabilitation robot can provide mirror therapy to the affected side. This method can be used as a control strategy of upper-limb rehabilitation robots for self-rehabilitation training with stroke patients.
机译:机器人辅助康复是一个不断发展的领域,可以提供超过治疗师介导的康复的强度,质量和数量的治疗。在康复机器人中已经实现了几种控制算法,以开发一种患者合作策略,从而能够理解用户的意图并提供适当的康复培训。在本文中,我们介绍了一种上肢运动模式识别方法,该方法使用表面肌电图(sEMG)信号和支持向量机(SVM)来控制康复机器人ReRobot,该机器人旨在进行后肢康复训练。中风患者。对于使用ReRobot进行的卒中后康复训练,首先要通过检测和处理sEMG信号来识别患者健康侧的上肢运动。然后,ReRobot协助受损的手臂进行镜面康复治疗。为了训练和测试SVM模型,五名健康受试者参加了实验并执行了五种标准的上肢运动,包括肩部屈曲,外展,内旋,外旋和肘关节屈曲。来自五个健康受试者的实验结果证明了良好的准确性。通过识别健康侧的模型运动,康复机器人可以为患侧提供镜面治疗。该方法可以用作上肢康复机器人的控制策略,用于中风患者的自我康复训练。

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