IEEE Trans Neural Syst Rehabil Eng. 2020 Dec;28(12):3113-3120. doi: 10.1109/TNSRE.2020.3038051. Epub 2021 Jan 28.
EMG-based continuous wrist joint motion estimation has been identified as a promising technique with huge potential in assistive robots. Conventional data-driven model-free methods tend to establish the relationship between the EMG signal and wrist motion using machine learning or deep learning techniques, but cannot interpret the functional relationship between neuro-commands and relevant joint motion. In this paper, an EMG-driven musculoskeletal model is proposed to estimate continuous wrist joint motion. This model interprets the muscle activation levels from EMG signals. A muscle-tendon model is developed to compute the muscle force during the voluntary flexion/extension movement, and a joint kinematic model is established to estimate the continuous wrist motion. To optimize the subject-specific physiological parameters, a genetic algorithm is designed to minimize the differences of joint motion prediction from the musculoskeletal model and joint motion measurement using motion data during training. Results show that mean root-mean-square-errors are 10.08°, 10.33°, 13.22° and 17.59° for single flexion/extension, continuous cycle and random motion trials, respectively. The mean coefficient of determination is over 0.9 for all the motion trials. The proposed EMG-driven model provides an accurate tracking performance based on user's intention.
基于肌电图的连续腕关节运动估计已被确定为一种很有前途的技术,在辅助机器人中有巨大的潜力。传统的数据驱动的无模型方法倾向于使用机器学习或深度学习技术来建立肌电图信号与腕部运动之间的关系,但不能解释神经指令与相关关节运动之间的功能关系。本文提出了一种基于肌电图的肌肉骨骼模型来估计连续的腕关节运动。该模型从肌电图信号中解释肌肉的激活水平。建立了一个肌肉-肌腱模型来计算自愿屈伸运动中的肌肉力,建立了一个关节运动学模型来估计连续的腕部运动。为了优化特定于主体的生理参数,设计了遗传算法来最小化肌骨骼模型和关节运动测量之间的关节运动预测的差异,使用训练期间的运动数据。结果表明,单次屈伸、连续循环和随机运动试验的平均均方根误差分别为 10.08°、10.33°、13.22°和 17.59°。所有运动试验的平均决定系数均超过 0.9。所提出的基于肌电图的模型基于用户的意图提供了准确的跟踪性能。