Department of Electrical and Computer Engineering, University of Patras, 265 04 Patras, Greece.
Department of Electronics and Informatics (ETRO), Vrije Universiteit Brussel, 1050 Ixelles, Belgium.
Sensors (Basel). 2022 Feb 22;22(5):1694. doi: 10.3390/s22051694.
In recent years, the successful application of Deep Learning methods to classification problems has had a huge impact in many domains. (1) Background: In biomedical engineering, the problem of gesture recognition based on electromyography is often addressed as an image classification problem using Convolutional Neural Networks. Recently, a specific class of these models called Temporal Convolutional Networks (TCNs) has been successfully applied to this task. (2) Methods: In this paper, we approach electromyography-based hand gesture recognition as a sequence classification problem using TCNs. Specifically, we investigate the real-time behavior of our previous TCN model by performing a simulation experiment on a recorded sEMG dataset. (3) Results: The proposed network trained with data augmentation yields a small improvement in accuracy compared to our existing model. However, the classification accuracy is decreased in the real-time evaluation, showing that the proposed TCN architecture is not suitable for such applications. (4) Conclusions: The real-time analysis helps in understanding the limitations of the model and exploring new ways to improve its performance.
近年来,深度学习方法在分类问题上的成功应用在许多领域产生了巨大的影响。(1)背景:在生物医学工程中,基于肌电图的手势识别问题通常被视为使用卷积神经网络的图像分类问题。最近,这些模型的一个特定类别称为时间卷积网络(TCN)已成功应用于该任务。(2)方法:在本文中,我们使用 TCN 将基于肌电图的手势识别作为序列分类问题来处理。具体来说,我们通过在记录的 sEMG 数据集上执行仿真实验来研究我们之前的 TCN 模型的实时行为。(3)结果:与我们现有的模型相比,经过数据扩充训练的建议网络在准确性方面略有提高。然而,实时评估中的分类准确性降低,表明所提出的 TCN 架构不适合此类应用。(4)结论:实时分析有助于了解模型的局限性,并探索提高其性能的新方法。