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EMG-Based Hand Gesture Classification with Long Short-Term Memory Deep Recurrent Neural Networks

机译:基于EMG的手势识别与长期短期记忆深层递归神经网络

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Electromyogram (EMG) pattern recognition has been utilized with the traditional machine and deep learning architectures as a control strategy for upper-limb prostheses. However, most of these learning architectures, including those in convolutional neural networks, focus the spatial correlations only; but muscle contractions have a strong temporal dependency. Our primary aim in this paper is to investigate the effectiveness of recurrent deep learning networks in EMG classification as they can learn long-term and non-linear dynamics of time series. We used a Long Short-Term Memory (LSTM-based) neural network to perform multiclass classification with six grip gestures at three different force levels (low, medium, and high) generated by nine amputees. Four different feature sets were extracted from the raw signals and fed to LSTM. Moreover, to investigate a generalization of the proposed method, three different training approaches were tested including 1) training the network with feature extracted from one specific force level and testing it with the same force level, 2) training the network with one specific force level and testing it with two remained force levels, and 3) training the network with all of the force levels and testing it with a single force level. Our results show that LSTM-based neural network can provide reliable performance with average classification errors of around 9% across all nine amputees and force levels. We demonstrate the applicability of deep learning for upperlimb prosthesis control.
机译:肌电图(EMG)模式识别已与传统的机器和深度学习体系结构一起用作上肢假体的控制策略。但是,大多数这些学习体系结构,包括卷积神经网络中的那些体系结构,都只关注空间相关性。但是肌肉收缩具有强烈的时间依赖性。本文的主要目的是研究循环深度学习网络在EMG分类中的有效性,因为它们可以学习时间序列的长期和非线性动态。我们使用长短期记忆(基于LSTM)神经网络对九个截肢者产生的三种不同力水平(低,中和高)的六个握持手势进行多类分类。从原始信号中提取了四个不同的特征集,并将其提供给LSTM。此外,为了研究所提出方法的一般性,测试了三种不同的训练方法,包括:1)使用从一个特定力级别提取的特征训练网络并以相同的力级别对其进行测试; 2)使用一个特定力级别的训练网络并使用两个剩余的力级别对其进行测试,以及3)使用所有力级别训练网络并使用单个力级别对其进行测试。我们的结果表明,基于LSTM的神经网络可以提供可靠的性能,在所有9个截肢者和受力水平上的平均分类误差约为9%。我们证明了深度学习在上肢假体控制中的适用性。

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