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基于迁移学习的肌电手势信号深度学习分类

Deep Learning for Electromyographic Hand Gesture Signal Classification Using Transfer Learning.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2019 Apr;27(4):760-771. doi: 10.1109/TNSRE.2019.2896269. Epub 2019 Jan 31.

Abstract

In recent years, deep learning algorithms have become increasingly more prominent for their unparalleled ability to automatically learn discriminant features from large amounts of data. However, within the field of electromyography-based gesture recognition, deep learning algorithms are seldom employed as they require an unreasonable amount of effort from a single person, to generate tens of thousands of examples. This paper's hypothesis is that general, informative features can be learned from the large amounts of data generated by aggregating the signals of multiple users, thus reducing the recording burden while enhancing gesture recognition. Consequently, this paper proposes applying transfer learning on aggregated data from multiple users while leveraging the capacity of deep learning algorithms to learn discriminant features from large datasets. Two datasets comprised 19 and 17 able-bodied participants, respectively (the first one is employed for pre-training), were recorded for this work, using the Myo armband. A third Myo armband dataset was taken from the NinaPro database and is comprised ten able-bodied participants. Three different deep learning networks employing three different modalities as input (raw EMG, spectrograms, and continuous wavelet transform (CWT)) are tested on the second and third dataset. The proposed transfer learning scheme is shown to systematically and significantly enhance the performance for all three networks on the two datasets, achieving an offline accuracy of 98.31% for 7 gestures over 17 participants for the CWT-based ConvNet and 68.98% for 18 gestures over 10 participants for the raw EMG-based ConvNet. Finally, a use-case study employing eight able-bodied participants suggests that real-time feedback allows users to adapt their muscle activation strategy which reduces the degradation in accuracy normally experienced over time.

摘要

近年来,深度学习算法因其从大量数据中自动学习判别特征的无与伦比的能力而变得越来越突出。然而,在基于肌电图的手势识别领域,很少使用深度学习算法,因为它们需要一个人付出不合理的努力,生成数万个人例。本文的假设是,可以从聚合多个用户信号生成的大量数据中学习到通用的、信息丰富的特征,从而减少记录负担,同时增强手势识别能力。因此,本文提出在从多个用户聚合的数据上应用迁移学习,同时利用深度学习算法从大数据集中学习判别特征的能力。这项工作共记录了两个数据集,分别由 19 名和 17 名健全参与者组成(第一个数据集用于预训练),使用 Myo 臂带进行记录。第三个 Myo 臂带数据集来自 NinaPro 数据库,由 10 名健全参与者组成。在第二个和第三个数据集上,测试了三种不同的深度学习网络,它们分别采用三种不同的模态作为输入(原始肌电图、频谱图和连续小波变换(CWT))。所提出的迁移学习方案被证明能够系统地显著提高所有三个网络在两个数据集上的性能,在基于 CWT 的 ConvNet 上,对于 17 名参与者的 7 个手势,离线精度达到 98.31%,在基于原始 EMG 的 ConvNet 上,对于 10 名参与者的 18 个手势,离线精度达到 68.98%。最后,一个使用 8 名健全参与者的用例研究表明,实时反馈允许用户调整肌肉激活策略,从而减少随着时间的推移精度下降的问题。

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