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基于长短期记忆神经网络和迁移学习的下肢关节扭矩预测。

Lower-Limb Joint Torque Prediction Using LSTM Neural Networks and Transfer Learning.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2022;30:600-609. doi: 10.1109/TNSRE.2022.3156786. Epub 2022 Mar 21.

Abstract

Estimation of joint torque during movement provides important information in several settings, such as effect of athletes' training or of a medical intervention, or analysis of the remaining muscle strength in a wearer of an assistive device. The ability to estimate joint torque during daily activities using wearable sensors is increasingly relevant in such settings. In this study, lower limb joint torques during ten daily activities were predicted by long short-term memory (LSTM) neural networks and transfer learning. LSTM models were trained with muscle electromyography signals and lower limb joint angles. Hip flexion/extension, hip abduction/adduction, knee flexion/extension and ankle dorsiflexion/plantarflexion torques were predicted. The LSTM models' performance in predicting torque was investigated in both intra-subject and inter-subject scenarios. Each scenario was further divided into intra-task and inter-task tests. We observed that LSTM models could predict lower limb joint torques during various activities accurately with relatively low error (root mean square error ≤ 0.14 Nm/kg, normalized root mean square error ≤ 8.7%) either through a uniform model or through ten separate models in intra-subject tests. Furthermore, a transfer learning technique was adopted in the inter-task and inter-subject tests to further improve the generalizability of LSTM models by pre-training a model on multiple subjects and/or tasks and transferring the learned knowledge to a target task/subject. Particularly in the inter-subject tests, we could predict joint torques accurately in several movements after training from only a few movements from new subjects.

摘要

在多种情境下,如运动员训练或医疗干预的效果、辅助设备佩戴者剩余肌肉力量的分析等,对运动过程中的关节扭矩进行估计能提供重要信息。在这些情境下,使用可穿戴传感器来估计日常活动中的关节扭矩的能力变得越来越重要。在这项研究中,使用长短期记忆(LSTM)神经网络和迁移学习来预测十种日常活动中的下肢关节扭矩。LSTM 模型使用肌肉肌电图信号和下肢关节角度进行训练。预测髋关节屈伸、髋关节外展/内收、膝关节屈伸和踝关节背屈/跖屈扭矩。在个体内和个体间场景中研究了 LSTM 模型在预测扭矩方面的性能。每个场景进一步分为任务内和任务间测试。我们观察到,LSTM 模型可以通过统一模型或在个体内测试中的十个单独模型准确地预测各种活动中的下肢关节扭矩,误差相对较低(均方根误差≤0.14 Nm/kg,归一化均方根误差≤8.7%)。此外,在任务间和个体间测试中采用了迁移学习技术,通过在多个主体和/或任务上进行预训练并将学习到的知识转移到目标任务/主体,进一步提高 LSTM 模型的泛化能力。特别是在个体间测试中,我们可以在仅从新主体的少数运动中训练后准确预测多个运动中的关节扭矩。

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