IEEE Trans Neural Syst Rehabil Eng. 2024;32:102-111. doi: 10.1109/TNSRE.2023.3341220. Epub 2024 Jan 15.
Though the forearm is the focus of the prostheses, myoelectric control with the electrodes on the wrist is more comfortable for general consumers because of its unobtrusiveness and incorporation with the existing wrist-based wearables. Recently, deep learning methods have gained attention for myoelectric control but their performance is unclear on wrist myoelectric signals. This study compared the gesture recognition performance of myoelectric signals from the wrist and forearm between a state-of-the-art method, TDLDA, and four deep learning models, including convolutional neural network (CNN), temporal convolutional network (TCN), gate recurrent unit (GRU) and Transformer. It was shown that with forearm myoelectric signals, the performance between deep learning models and TDLDA was comparable, but with wrist myoelectric signals, the deep learning models outperformed TDLDA significantly with a difference of at least 9%, while the performance of TDLDA was close between the two signal modalities. This work demonstrated the potential of deep learning for wrist-based myoelectric control and would facilitate its application into more sections.
虽然前臂是假肢的重点,但由于手腕上的电极具有不引人注意的特点,并且可以与现有的基于手腕的可穿戴设备结合使用,因此对于一般消费者来说,基于肌电的控制更为舒适。最近,深度学习方法在肌电控制方面引起了关注,但它们在手腕肌电信号上的性能尚不清楚。本研究比较了基于手腕和前臂肌电信号的最新方法 TDLDA 与四种深度学习模型(包括卷积神经网络 (CNN)、时间卷积网络 (TCN)、门控循环单元 (GRU) 和 Transformer)的手势识别性能。结果表明,在前臂肌电信号中,深度学习模型和 TDLDA 的性能相当,但在手腕肌电信号中,深度学习模型的性能明显优于 TDLDA,差异至少为 9%,而 TDLDA 在两种信号模式下的性能接近。这项工作展示了深度学习在基于手腕的肌电控制中的潜力,并将促进其在更多领域的应用。