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A novel attention-based hybrid CNN-RNN architecture for sEMG-based gesture recognition

机译:一种新颖的基于注意力的混合CNN-RNN架构,用于基于sEMG的手势识别

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摘要

The surface electromyography (sEMG)-based gesture recognition with deep learning approach plays an increasingly important role in human-computer interaction. Existing deep learning architectures are mainly based on Convolutional Neural Network (CNN) architecture which captures spatial information of electromyogram signal. Motivated by the sequential nature of electromyogram signal, we propose an attention-based hybrid CNN and RNN (CNN-RNN) architecture to better capture temporal properties of electromyogram signal for gesture recognition problem. Moreover, we present a new sEMG image representation method based on a traditional feature vector which enables deep learning architectures to extract implicit correlations between different channels for sparse multi-channel electromyogram signal. Extensive experiments on five sEMG benchmark databases show that the proposed method outperforms all reported state-of-the-art methods on both sparse multi-channel and high-density sEMG databases. To compare with the existing works, we set the window length to 200ms for NinaProDB1 and NinaProDB2, and 150ms for BioPatRec sub-database, CapgMyo sub-database, and csl-hdemg databases. The recognition accuracies of the aforementioned benchmark databases are 87.0%, 82.2%, 94.1%, 99.7% and 94.5%, which are 9.2%, 3.5%, 1.2%, 0.2% and 5.2% higher than the state-of-the-art performance, respectively.
机译:具有深度学习方法的基于表面肌电图(sEMG)的手势识别在人机交互中扮演着越来越重要的角色。现有的深度学习架构主要基于卷积神经网络(CNN)架构,该架构捕获肌电信号的空间信息。受肌电图信号顺序性质的影响,我们提出了一种基于注意力的CNN和RNN混合结构(CNN-RNN),以更好地捕获肌电图信号的时间特性以解决手势识别问题。此外,我们提出了一种基于传统特征向量的新sEMG图像表示方法,该方法使深度学习体系结构能够提取稀疏多通道肌电信号的不同通道之间的隐式相关性。在五个sEMG基准数据库上进行的大量实验表明,所提出的方法在稀疏多通道和高密度sEMG数据库上均胜过所有报告的最新技术。为了与现有作品进行比较,我们将NinaProDB1和NinaProDB2的窗口长度设置为200ms,并将BioPatRec子数据库,CapgMyo子数据库和csl-hdemg数据库的窗口长度设置为150ms。上述基准数据库的识别精度分别为87.0%,82.2%,94.1%,99.7%和94.5%,比最新技术分别高9.2%,3.5%,1.2%,0.2%和5.2%。性能分别。

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