腕部位置肌电图信号分类的深度神经网络:初步结果

A. Orjuela-Cañón, A. F. R. Olaya, Leonardo Forero
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引用次数: 18

摘要

身体受损的人可以使用表面肌电图(SEMG)信号来控制康复和辅助设备。肌电图是与收缩肌肉相关的神经肌肉激活的电表现。肌电图直接反映人的运动意图;因此,它们可以作为人机交互的输入信息。提出了一种基于肌电图的模式识别算法,利用肌电图信号对关节屈伸运动中的腕角位置进行分类。该算法采用时域和频域相结合的特征提取阶段。模式识别阶段使用人工神经网络(NN)作为分类器。此外,使用自动编码器,深度神经网络架构进行了测试。对10名被试进行了一组实验。实验包括前臂进行手腕屈伸运动时记录的五个肌电信号通道,以及使用商用电测仪获取关节角度。结果表明,浅层神经网络的性能优于基于自编码器的多层神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep neural network for EMG signal classification of wrist position: Preliminary results
Physically impaired people may use Surface Electromyography (SEMG) signals to control rehabilitation and assistive devices. SEMG is the electrical manifestation of the neuromuscular activation associated with a contracting muscle. SEMG directly reflects the human motion intention; thus, they can be used as input information for human-robot interaction. This paper proposes an EMG-based pattern recognition algorithm for classification of joint wrist angular position during flexion-extension movements from EMG signals. The algorithm uses a feature extraction stage based on a combination of time and frequency domain. The pattern recognition stage uses an artificial neural network (NN) as classifier. Also, using an autoencoder, deep NN architecture was tested. It was carried out a set of experiment with 10 subjects. Experiments included five recorded SEMG channels from forearm executing wrist flexion and extension movements, as well as the use of a commercial electrogoniometer to acquire joint angle. Results show that shallow NN had better performance that architectures with more layers based on autoencoders.
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