IEEE Trans Neural Syst Rehabil Eng. 2023;31:4286-4294. doi: 10.1109/TNSRE.2023.3323364. Epub 2023 Nov 3.
Reliable and accurate EMG-driven prediction of joint torques are instrumental in the control of wearable robotic systems. This study investigates how different EMG input features affect the machine learning algorithm-based prediction of ankle joint torque in isometric and dynamic conditions. High-density electromyography (HD-EMG) of five lower leg muscles were recorded during isometric contractions and dynamic tasks. Four datasets (HD-EMG, HD-EMG with reduced dimensionality, features extracted from HD-EMG with Convolutional Neural Network, and bipolar EMG) were created and used alone or in combination with joint kinematic information for the prediction of ankle joint torque using Support Vector Regression. The performance was evaluated under intra-session, inter-subject, and inter-session cases. All HD-EMG-derived datasets led to significantly more accurate isometric ankle torque prediction than the bipolar EMG datasets. The highest torque prediction accuracy for the dynamic tasks was achieved using bipolar EMG or HD-EMG with reduced dimensionality in combination with kinematic features. The findings of this study contribute to the knowledge allowing an informed selection of appropriate features for EMG-driven torque prediction.
可靠且准确的肌电驱动的关节扭矩预测对于可穿戴机器人系统的控制至关重要。本研究探讨了不同的肌电输入特征如何影响基于机器学习算法的踝关节扭矩在等长和动态条件下的预测。在等长收缩和动态任务期间记录了五个小腿肌肉的高密度肌电图(HD-EMG)。创建了四个数据集(HD-EMG、降维后的 HD-EMG、从具有卷积神经网络的 HD-EMG 中提取的特征以及双极 EMG),并单独或与关节运动学信息结合使用,使用支持向量回归来预测踝关节扭矩。在会话内、受试者间和会话间情况下评估了性能。所有基于 HD-EMG 的数据集都导致比双极 EMG 数据集更准确的等长踝关节扭矩预测。使用双极 EMG 或降维后的 HD-EMG 与运动学特征相结合,可实现动态任务的最高扭矩预测精度。本研究的结果有助于为肌电驱动的扭矩预测选择合适特征提供信息。