Feature extraction and real-time recognition of hand motion intentions from EMGs via artificial neural networks

Artemiy Oleinikov, B. Abibullaev, A. Shintemirov, M. Folgheraiter
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引用次数: 13

Abstract

Electromyography (EMG) signal analysis is one of the key determinants of the effectiveness of prosthetic devices. Modern researchers provide various methods of detection of different hand movements and postures. In this work, we examined the possibility to produce efficient detection of hand movement to a specific posture with the minimum possible number of electrodes. The data acquisition is produced with 1 channel BiTalino EMG sensor based on bipolar differential measurement. Using feature extraction and artificial neural network we achieved 82% of offline classification accuracy for 8 hand motions and 91% accuracy for 6 hand motions based on 200 ms of EMG signal. Also, the motion detection algorithm was developed and successfully tested that allowed to implement the algorithm for real-time classification and that showed sufficient accuracy for 2 and 4 motion classes cases.
基于人工神经网络的手动图特征提取与实时识别
肌电图(EMG)信号分析是假肢装置有效性的关键决定因素之一。现代研究人员提供了各种方法来检测不同的手部运动和姿势。在这项工作中,我们研究了用尽可能少的电极对特定姿势的手部运动进行有效检测的可能性。数据采集采用基于双极差分测量的1通道BiTalino肌电传感器。利用特征提取和人工神经网络对200 ms的肌电信号进行8个手部动作的离线分类准确率达到82%,6个手部动作的离线分类准确率达到91%。此外,开发并成功测试了运动检测算法,使算法能够实现实时分类,并且在2和4个运动类别的情况下显示出足够的准确性。
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