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A novel hand gesture recognition method based on 2-channel sEMG

机译:基于二通道sEMG的手势识别新方法

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摘要

Hand gesture recognition is getting more and more important in the area of rehabilitation and human machine interface (HMI). However, most current approaches are difficult to achieve practical application because of an excess of sensors. In this work, we proposed a method to recognize six common hand gestures and establish the optimal relationship between hand gesture and muscle by utilizing only two channels of surface electromyography (sEMG). We proposed an integrated approach to process the sEMG data including filtering, endpoint detection, feature extraction, and classifier. In this study, we used one-order digital lowpass infinite impulse response (IIR) filter with the cutoff frequency of 500 Hz to extract the envelope of the sEMG signals. The energy was utilized as a feature to detect the endpoint of motion. The short-time energy, zero-crossing rate and linear predictive coefficient (LPC) with 12 levels were chosen as the features and back propagation (BP) neural network was utilized to classify. In order to test the method, five subjects were involved in the experiment to test the hypothesis. With the proposed method, 96.41% to 99.70% recognition rate was obtained. The experimental results revealed that the proposed method is highly efficient both in sEMG data acquisition and hand motions recognition, and played a role in promoting hand rehabilitation and HMI.
机译:手势识别在康复和人机界面(HMI)领域中变得越来越重要。但是,由于传感器过多,目前大多数方法难以实现实际应用。在这项工作中,我们提出了一种识别六个常见手势并仅利用表面肌电图(sEMG)的两个通道来建立手势与肌肉之间的最佳关系的方法。我们提出了一种集成的方法来处理sEMG数据,包括过滤,端点检测,特征提取和分类器。在这项研究中,我们使用了截止频率为500Hz的一阶数字低通无限冲激响应(IIR)滤波器来提取sEMG信号的包络。能量被用作检测运动终点的功能。选择具有12个级别的短时能量,过零率和线性预测系数(LPC)作为特征,并利用反向传播(BP)神经网络进行分类。为了检验该方法,本实验涉及五个受试者以检验该假设。该方法获得了96.41%〜99.70%的识别率。实验结果表明,该方法在sEMG数据采集和手部动作识别方面均非常有效,并在促进手部康复和HMI方面发挥了作用。

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