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Surface EMG-based human-machine interface that can minimise the influence of muscle fatigue

机译:基于表面肌电图的人机界面,可以最大程度地减少肌肉疲劳的影响

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摘要

Copyright © 2014 Inderscience Enterprises Ltd. It is clear that the surface electromyographic-based (sEMG) human-machine interface (HMI) shows a reduction in stability when the muscle fatigue occurs. This paper presents an improved incremental training algorithm that is based on online support vector machine (SVM). The continuous wavelet transform is used to study the changes of sEMG when muscle fatigue occurs, and then the improved online SVM is applied for sEMG classification. The parameters of the SVM model are adjusted for adaptation based on the changes of sEMG signals, and the training data is conditionally selected and forgotten. Experiment results show that the presented method can perform accurate modelling and the training speed is increased. Furthermore, this method effectively overcomes the influence of muscle fatigue during a long-term operation of the sEMG-based HMI.
机译:版权所有©2014 Inderscience Enterprises Ltd.显然,当发生肌肉疲劳时,基于表面肌电图(sEMG)的人机界面(HMI)会降低稳定性。本文提出了一种基于在线支持向量机(SVM)的改进的增量训练算法。连续小波变换用于研究肌肉疲劳发生时sEMG的变化,然后将改进的在线SVM用于sEMG分类。根据sEMG信号的变化调整SVM模型的参数以进行自适应,并且有条件地选择并忘记了训练数据。实验结果表明,该方法可以进行准确的建模,提高了训练速度。此外,该方法有效地克服了基于sEMG的HMI的长期操作过程中肌肉疲劳的影响。

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    Xu, X; Zhang, Y; Hu, H;

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