College of Electronic and Information Engineering, Hebei University, Baoding, Hebei, China.
Key Laboratory of Digital Medical Engineering of Hebei Province, Hebei University, Baoding, Hebei, China.
Math Biosci Eng. 2023 Jan;20(2):3237-3260. doi: 10.3934/mbe.2023152. Epub 2022 Dec 2.
The maturity of human-computer interaction technology has made it possible to use surface electromyographic signals (sEMG) to control exoskeleton robots and intelligent prostheses. However, the available upper limb rehabilitation robots controlled by sEMG have the shortcoming of inflexible joints. This paper proposes a method based on a temporal convolutional network (TCN) to predict upper limb joint angles by sEMG. The raw TCN depth was expanded to extract the temporal features and save the original information. The timing sequence characteristics of the muscle blocks that dominate the upper limb movement are not apparent, leading to low accuracy of the joint angle estimation. Therefore, this study squeeze-and-excitation networks (SE-Net) to improve the network model of the TCN. Finally, seven movements of the human upper limb were selected for ten human subjects, recording elbow angle (EA), shoulder vertical angle (SVA), and shoulder horizontal angle (SHA) values during their movements. The designed experiment compared the proposed SE-TCN model with the backpropagation (BP) and long short-term memory (LSTM) networks. The proposed SE-TCN systematically outperformed the BP network and LSTM model by the mean values: by 25.0 and 36.8% for EA, by 38.6 and 43.6% for SHA, and by 45.6 and 49.5% for SVA, respectively. Consequently, its values exceeded those of BP and LSTM by 13.6 and 39.20% for EA, 19.01 and 31.72% for SHA, and 29.22 and 31.89% for SVA, respectively. This indicates that the proposed SE-TCN model has good accuracy and can be used to estimate the angles of upper limb rehabilitation robots in the future.
人体交互技术的成熟使得利用表面肌电信号(sEMG)来控制外骨骼机器人和智能假肢成为可能。然而,现有的基于 sEMG 控制的上肢康复机器人存在关节不灵活的缺点。本文提出了一种基于时间卷积网络(TCN)的方法,通过 sEMG 预测上肢关节角度。原始 TCN 深度扩展到提取时间特征并保存原始信息。肌肉块主导上肢运动的时间序列特征不明显,导致关节角度估计精度较低。因此,本研究引入挤压激励网络(SE-Net)来改进 TCN 的网络模型。最后,选择了人体上肢的七种运动,对十位人体受试者进行记录,记录运动过程中的肘部角度(EA)、肩部垂直角度(SVA)和肩部水平角度(SHA)值。设计的实验将提出的 SE-TCN 模型与反向传播(BP)和长短期记忆(LSTM)网络进行了比较。提出的 SE-TCN 模型在平均指标上明显优于 BP 网络和 LSTM 模型,分别提高了 25.0%和 36.8%的 EA,提高了 38.6%和 43.6%的 SHA,提高了 45.6%和 49.5%的 SVA。因此,它的 值分别比 BP 和 LSTM 提高了 13.6%和 39.20%的 EA,19.01%和 31.72%的 SHA,29.22%和 31.89%的 SVA。这表明提出的 SE-TCN 模型具有良好的准确性,可用于未来估计上肢康复机器人的角度。