基于多通道表面肌电信号和深度学习技术的人体运动分类

Jianhua Zhang, C. Ling, Sunan Li
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引用次数: 9

摘要

肌电图(EMG)信号可用于人体运动分类。然而,由于肌电信号的非线性和时变特性,很难对其进行分类,因此采用合适的算法进行肌电特征提取和模式分类至关重要。在文献中,各种机器学习(ML)方法已经应用于肌电信号分类问题。在本文中,我们提取了肌电信号的四个时域特征,并使用生成图形模型深度信念网络(DBN)对肌电信号进行分类。DBN是一种快速、贪婪的深度学习算法,可以快速找到具有许多隐藏层的深度网络的一组最优权重。为了评估DBN模型,我们获取肌电信号,提取其时域特征,然后利用DBN模型对人体运动进行分类。真实的数据分析结果表明,所提出的深度学习技术在使用测量的8通道肌电信号对人体运动进行二值和四类识别方面是有效的。提出的DBN模型可以应用于基于肌电图的用户界面设计。
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Human Movements Classification Using Multi-channel Surface EMG Signals and Deep Learning Technique
Electromyography (EMG) signals can be used for human movements classification. Nonetheless, due to their nonlinear and time-varying properties, it is difficult to classify the EMG signals and it is critical to use appropriate algorithms for EMG feature extraction and pattern classification. In literature various machine learning (ML) methods have been applied to the EMG signal classification problem in question. In this paper, we extracted four time-domain features of the EMG signals and use a generative graphical model, Deep Belief Network (DBN), to classify the EMG signals. A DBN is a fast, greedy deep learning algorithm that can rapidly find a set of optimal weights of a deep network with many hidden layers. To evaluate the DBN model, we acquired EMG signals, extracted their time-domain features, and then utilized the DBN model to classify human movements. The real data analysis results are presented to show the effectiveness of the proposed deep learning technique for both binary and 4-class recognition of human movements using the measured 8-channel EMG signals. The proposed DBN model may find applications in design of EMG-based user interfaces.
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