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A preliminary study of force estimation based on surface EMG: Towards neuromechanically guided soft oral rehabilitation robot

机译:基于表面EMG的力估计初探:朝神经力学引导柔软的口腔康复机器人

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Surface electromyography (sEMG) signals have been extensively studied in the area of intention detection, force estimation and control of rehabilitation devices. Studies regarding sEMG based jaw muscle force estimation are necessary towards building intuitive neural-controlled soft oral rehabilitation robot (SORR). This paper presents a force estimation algorithm based on masseter muscle sEMG signals to be used in the control of a developed SORR. Experiments were conducted to collect masseter muscle sEMG signals and biting force from 10 healthy subjects. By using two different time-frequency analysis, signal features were extracted and then input to an empirically established second-order polynomial force estimator to get the estimated force. Comparison has been made regarding to the performance of the proposed feature extraction algorithms. The results obtained from both the algorithms represent a decent accuracy in force estimation, indicating high implementation feasibility in the application of the neural-controlled SORR.
机译:在意图检测,力估计和康复装置的控制领域已经广泛研究了表面肌电图(SEMG)信号。关于建立直观的神经控制的软口腔康复机器人(Sorr)是必要的关于SEMG基颚肌力估计的研究。本文介绍了一种基于Masseter肌肉SEMG信号的力估计算法,用于控制发发SORR的控制。进行实验以收集来自10个健康受试者的肌肉肌肉半信号和咬合力。通过使用两个不同的时频分析,提取信号特征,然后输入到经验建立的二阶多项式估计器以获得估计力。对所提出的特征提取算法的性能进行了比较。从算法获得的结果代表了在力估计中的体面精度,表明在应用神经控制的Sorr的应用中的高实现可行性。

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