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Study on Motion Recognition for a Hand Rehabilitation Robot Based on sEMG Signals

机译:基于sEMG信号的手部康复机器人的运动识别研究

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Robot-assisted self-rehabilitation training can overcome the shortcomings of clinical rehabilitation, which is significant for stroke patients. This paper proposed a hand robot rehabilitation training system based on surface electromyography (sEMG) signals. This study combines pattern recognition technology and biomedical technology to collect the sEMG signals of the daily movements of the stroke patients, and then pre-processes signals, feature extraction and pattern recognition classification, and recognizes the movement intention of the patients. Through the hand rehabilitation robot to help the affected side of the hand for rehabilitation training. In the online self-rehabilitation training, a certain motion mode performed by the contralateral side of the patient is obtained according to the pattern recognition offline trained classifier to obtain the classification result, and the motor-controlled hand robot is driven to perform the corresponding motion to realize the self-rehabilitation training. Finally, simulation experiments and volunteer rehabilitation training experiments were carried out. The experimental results show that the recognition rate of pattern recognition reaches 93.70%±2.22%. Compared with BP neural network in other literatures, our proposed wavelet neural network is better than 8% in the accuracy of recognition classification. This system we designed can effectively help patients with self-rehabilitation training.
机译:机器人辅助自我康复培训可以克服临床康复的缺点,这对中风患者具有重要意义。本文提出了一种基于表面肌电图(SEMG)信号的手工康复训练系统。本研究结合了模式识别技术和生物医学技术来收集中风患者日常运动的SEMG信号,然后预处理信号,特征提取和模式识别分类,并认识到患者的运动意向。通过手工康复机器人帮助受影响的手康复训练。在在线自我康复训练中,根据图案识别离线训练分类器获得患者对侧侧执行的某个运动模式,以获得分类结果,并且驱动电动机控制的手机机器人以执行相应的运动实现自我康复培训。最后,进行了仿真实验和志愿者康复培训实验。实验结果表明,图案识别的识别率达到93.70%±2.22%。与其他文献中的BP神经网络相比,我们所提出的小波神经网络的识别分类准确性优于8%。我们设计的该系统可以有效帮助患者自我康复培训。

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