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An Improved Calibration Method of EMG-driven Musculoskeletal Model for Estimating Wrist Joint Angles

机译:一种改进的EMG驱动肌肉骨骼模型估算腕带角度的校正方法

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Lumped-parameter musculoskeletal model based on surface electromyography (EMG) promises to estimate multiple degrees-of-freedom (DoFs) wrist kinematics and might be potentially applied in the real-time control of powered upper limb prostheses. In this study, we proposed a new parameter calibration method based on the lumped-parameter musculoskeletal model. Compared with the existing calibration method in the lumped-parameter musculoskeletal model, this paradigm used an improved method of calculating estimated joint angles in optimization and a reduced training dataset (data from only single-DoF movements) to optimize model parameters. Surface EMG signals were then mapped into the kinematics of the wrist joint using the optimized musculoskeletal model. In the experiments, wrist joint angles and surface EMG signals were simultaneously acquired from able-bodied subjects while performing 3 movements, including flexion/extension (Flex/Ext) only, prona-tion/supination (Pro/Sup) only, and 2-DoF movements. The offline tracking performance of the proposed method was comparable to that of the existing calibration method with averaged r = 0.883 and NRMSE = 0.218. Moreover, the results demonstrated significant superiority of the proposed method over the existing method with less amount of data for parameter tuning, providing a promising direction for predicting multi-DoF limb motions with only single-DoF information.
机译:基于表面肌电图(EMG)的集合参数肌肉骨骼模型承诺估计多种自由度(DOFS)手腕运动学,并且可能潜在地应用于动力上肢假体的实时控制。在这项研究中,我们提出了一种基于Lumply参数肌肉骨骼模型的新参数校准方法。与集合参数肌肉骨骼模型中的现有校准方法相比,该范式使用了在优化中计算估计的关节角度的改进方法和减少的训练数据集(仅来自单DOF运动的数据)来优化模型参数。然后使用优化的肌肉骨骼模型将表面EMG信号映射到手腕关节的运动学中。在实验中,手腕接头角度和表面EMG信号在执行3个运动时同时获取能够从机身主体获取,包括仅屈曲/延伸(Flex / Ext),仅限原/索索(Pro / Sup),以及2- DOF运动。所提出的方法的离线跟踪性能与具有平均r = 0.883和Nrmse = 0.218的现有校准方法的跟踪性能相当。此外,结果表明了在具有较少数量的参数调谐的现有方法上提出的方法的显着优越性,提供了用于预测仅具有单DOF信息的多DOF肢体运动的有希望的方向。

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