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Prediction of externally applied forces to human hands using frequency content of surface EMG signals.

机译:使用表面EMG信号的频率内容预测对人的手施加的外部力。

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摘要

In this work, a new signal processing method was proposed in order to predict externally applied forces to human hands by deriving a relationship between the surface electromyographic (SEMG) signals and experimentally known forces. This relationship was investigated by analyzing the spectral features of the SEMG signals. SEMG signals were recorded from three subjects during isometric contraction and from another three subjects during anisometric contraction. In order to determine force-SEMG signal relationship, higher order frequency moments (HOFMs) of the signals were calculated and used as characterizing features of SEMG signals. Subsequently, artificial neural networks (ANN) with backpropagation algorithm were trained by using the HOFMs. Root mean square difference (RMSD) between the actual and predicted forces was calculated to evaluate force prediction performance of the ANN. In addition to RMSD, cross-correlation coefficients between actual and predicted force time histories were also calculated for anisometric experiment results. The RMSD values ranged from 0.34 and 0.02 in the isometric contraction experiments. In the anisometric contraction tests, RMSD results were between 0.23 and 0.09 and cross-correlation coefficients ranged from 0.91 to 0.98. In order to compare the performance of the HOFMs with a widely used EMG signal processing technique, root-mean-squared (RMS) values of the EMG signals were also calculated and used to train the ANN as another characterizing feature of the signal. Predicted forces using HOFMs technique were in general closer to the actual forces than those of obtained by using RMS values. The results indicated that the proposed signal processing method showed an encouraging performance for predicting the forces applied to the human hands, and the spectral features of the EMG signal might be used as input parameter for the myoelectric controlled prostheses.
机译:在这项工作中,提出了一种新的信号处理方法,以便通过推导表面肌电图(SEMG)信号和实验已知力之间的关系来预测对人的手施加的外部力。通过分析SEMG信号的频谱特征研究了这种关系。在等距收缩期间从三名受试者记录了SEMG信号,在等距收缩期间从另外三名受试者记录了SEMG信号。为了确定力-SEMG信号关系,计算了信号的高阶频率矩(HOFM),并将其用作SEMG信号的特征。随后,使用HOFM对带有反向传播算法的人工神经网络(ANN)进行了训练。计算实际力和预测力之间的均方根差(RMSD),以评估ANN的力预测性能。除RMSD外,还为等轴实验结果计算了实际力和预测力时间历史之间的互相关系数。在等轴测收缩实验中,RMSD值的范围为0.34至0.02。在等距收缩测试中,RMSD结果在0.23至0.09之间,互相关系数在0.91至0.98之间。为了将HOFM的性能与广泛使用的EMG信号处理技术进行比较,还计算了EMG信号的均方根(RMS)值,并将其用于训练ANN作为信号的另一个特征。与使用RMS值获得的力相比,使用HOFMs技术预测的力通常更接近实际力。结果表明,所提出的信号处理方法在预测施加到人手上的力方面表现出令人鼓舞的性能,并且EMG信号的频谱特征可以用作肌电控制假体的输入参数。

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