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A Motor Unit-specific Images Based Scheme for Continuous Estimation of Wrist Torques - A Pilot Study

机译:基于机动单元的特定于特定图像,用于连续估计手腕扭矩 - 试点研究

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Neural interface using motor units (MUs) decomposed from surface electromyography (sEMG) has provided a novel approach for the intuitive human-robot interaction. However, existing feature extraction methods from decomposed MUs are simplex, ignoring the inherent spatial information and the subtle interactions between different MUs. In this study, we proposed a MU-specific images based scheme for extracting features from decomposed MUs and further estimating wrist torques continuously. Specifically, MU-specific images were reconstructed from decomposed MUs using sEMG and fed into a convolutional neural network for feature extraction and estimating wrist torques. The results demonstrated that the proposed scheme significantly outperformed three conventional regression methods using decomposed spike count features, with R2 equal to 0.86 ± 0.05 in pronation/supination and 0.90 ± 0.05 in flexion/extension. This study provides a novel scheme for estimation of continuous movement using decomposed MUs and potentially paves the way of neural interface.
机译:使用来自表面肌电图(SEMG)分解的电机单元(MU)的神经界面提供了一种用于直观的人机相互作用的新方法。然而,来自分解的MU的现有特征提取方法是单纯x,忽略固有的空间信息和不同亩之间的微妙相互作用。在这项研究中,我们提出了一种基于MU特定的图像,用于从分解的肌中提取特征,并连续地进一步估计手腕扭矩。具体地,使用SEMG从分解的MU重建MU特定的图像,并馈入用于特征提取和估计腕托的卷积神经网络。结果表明,所提出的方案使用r型峰值计数特征显着优于三种常规回归方法,具有r 2 在弯曲/索下等于0.86±0.05,屈曲/延伸中0.90±0.05。本研究提供了一种估计使用分解麝香的连续运动的新颖方案,并且可能铺平神经界面的方式。

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