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Feature extraction and pattern recognition of EMG-based signal for hand movements

机译:基于EMG的手部运动信号的特征提取和模式识别

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摘要

EMG pattern recognition has been developed to interpret the performance of different functional movements. It can be used to develop the movement control techniques of assistive devices for people who are physically disabled. Suitable features in time domain are extracted from three different hand movements. The EMG signal was recorded from Cubitus (Elbow) bending, Carpus (Wrist) twist, Brachium (Arm) twist and Palm contraction of forty eight healthy subjects (male and female) by two pairs of Ag-AgCl surface electrodes on the right and left antebrachium. The performance of the classifier indicates EMG-based recognition accuracy for similar movement of right vs. left is found to be more than 95% and for different movement of around 90%. Also, the classification accuracy for average data set is achieved around 93-97% when compared for left and right hand.
机译:EMG模式识别已被开发来解释不同功能运动的表现。它可以用于为残障人士开发辅助设备的运动控制技术。从三个不同的手部动作中提取出时域中合适的特征。通过左右两对Ag-AgCl表面电极对四十八名健康受试者(男性和女性)的肘关节(肘)弯曲,腕(腕)扭转,腕(臂)扭转和手掌收缩记录肌电信号前胸。分类器的性能表明,针对左右移动相似的运动,基于EMG的识别精度超过95%,针对不同移动的识别精度约为90%。同样,与左手和右手相比,平均数据集的分类准确率可达到93-97%。

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