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EMG-Based Estimation of Limb Movement Using Deep Learning With Recurrent Convolutional Neural Networks

机译:基于EMG的肢体运动估计,利用反复卷积神经网络的深入学习

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摘要

A novel model based on deep learning is proposed to estimate kinematic information for myoelectric control from multi-channel electromyogram (EMG) signals. The neural information of limb movement is embedded in EMG signals that are influenced by all kinds of factors. In order to overcome the negative effects of variability in signals, the proposed model employs the deep architecture combining convolutional neural networks (CNNs) and recurrent neural networks (RNNs). The EMG signals are transformed to time-frequency frames as the input to the model. The limb movement is estimated by the model that is trained with the gradient descent and backpropagation procedure. We tested the model for simultaneous and proportional estimation of limb movement in eight healthy subjects and compared it with support vector regression (SVR) and CNNs on the same data set. The experimental studies show that the proposed model has higher estimation accuracy and better robustness with respect to time. The combination of CNNs and RNNs can improve the model performance compared with using CNNs alone. The model of deep architecture is promising in EMG decoding and optimization of network structures can increase the accuracy and robustness.
机译:提出了一种基于深度学习的新型模型,以估算来自多通道电灰度(EMG)信号的磁体电力控制的运动信息。肢体运动的神经信息嵌入到受各种因素的影响的EMG信号中。为了克服信号变异性的负面影响,所提出的模型采用深度架构结合卷积神经网络(CNN)和经常性神经网络(RNN)。 EMG信号被转换为时频帧作为模型的输入。肢体运动估计由梯度下降和背部衰减过程训练的模型估计。我们测试了八个健康对象中的肢体运动的同步和比例估计的模型,并将其与同一数据集上的支持向量回归(SVR)和CNN进行比较。实验研究表明,所提出的模型具有更高的估计精度和相对于时间更好的鲁棒性。与使用CNNS单独使用CNNS和RNN的组合可以改善模型性能。深度架构模型在EMG解码中具有很有希望,网络结构的优化可以提高精度和鲁棒性。

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