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基于 sEMG 的紧耦合卷积变换模型的人体膝关节角度的端到端连续预测

sEMG-Based End-to-End Continues Prediction of Human Knee Joint Angles Using the Tightly Coupled Convolutional Transformer Model.

出版信息

IEEE J Biomed Health Inform. 2023 Nov;27(11):5272-5280. doi: 10.1109/JBHI.2023.3304639. Epub 2023 Nov 7.

Abstract

Wearable exoskeleton robots can promote the rehabilitation of patients with physical dysfunction. And improving human-computer interaction performance is a significant challenge for exoskeleton robots. The traditional feature extraction process based on surface Electromyography(sEMG) is complex and requires manual intervention, making real-time performance difficult to guarantee. In this study, we propose an end-to-end method to predict human knee joint angles based on sEMG signals using a tightly coupled convolutional transformer (TCCT) model. We first collected sEMG signals from 5 healthy subjects. Then, the envelope was extracted from the noise-removed sEMG signal and used as the input to the model. Finally, we developed the TCCT model to predict the knee joint angle after 100 ms. For the prediction performance, we used the Root Mean Square Error(RMSE), Pearson Correlation Coefficient(CC), and Adjustment R as metrics to evaluate the error between the actual knee angle and the predicted knee angle. The results show that the model can predict the human knee angle quickly and accurately. The mean RMSE, Adjustment R, and (CC) values of the model are 3.79°, 0.96, and 0.98, respectively, which are better than traditional deep learning models such as Informer (4.14, 0.95, 0.98), CNN (5.56, 0.89, 0.96) and CNN-BiLSTM (3.97, 0.95, 0.98). In addition, the prediction time of our proposed model is only 11.67 ± 0.67 ms, which is less than 100 ms. Therefore, the real-time and accuracy of the model can meet the continuous prediction of human knee joint angle in practice.

摘要

可穿戴式外骨骼机器人可以促进身体机能障碍患者的康复。提高人机交互性能是外骨骼机器人面临的重大挑战。传统的基于表面肌电信号(sEMG)的特征提取过程复杂,需要人工干预,难以保证实时性能。在这项研究中,我们提出了一种基于紧密耦合卷积变压器(TCCT)模型的端到端方法,使用 sEMG 信号预测人体膝关节角度。我们首先从 5 位健康受试者身上采集 sEMG 信号。然后,从去噪后的 sEMG 信号中提取包络作为模型的输入。最后,我们开发了 TCCT 模型,用于在 100ms 后预测膝关节角度。对于预测性能,我们使用均方根误差(RMSE)、皮尔逊相关系数(CC)和调整 R 作为指标来评估实际膝关节角度和预测膝关节角度之间的误差。结果表明,该模型能够快速准确地预测人体膝关节角度。模型的平均 RMSE、调整 R 和(CC)值分别为 3.79°、0.96 和 0.98,优于传统的深度学习模型,如 Informer(4.14,0.95,0.98)、CNN(5.56,0.89,0.96)和 CNN-BiLSTM(3.97,0.95,0.98)。此外,我们提出的模型的预测时间仅为 11.67±0.67ms,小于 100ms。因此,模型的实时性和准确性能够满足实际中对人体膝关节角度的连续预测。

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