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Grasping Force Estimation by sEMG Signals and Arm Posture: Tensor Decomposition Approach

机译:SEMG信号和手臂姿势抓取力估计:张量分解方法

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摘要

Grasping force estimation using surface Electromyography (sEMG) has been actively investigated as it can increase the manipulability and dexterity of prosthetic hands and robotic hands. Most of the current studies in this area only focus on finding the relationship between sEMG signals and the grasping force without considering the arm posture. Therefore, regression models are not suitable to predict grasping force in various arm postures. In this paper, a method to predict the grasping force from sEMG signals and various grasping postures is developed. The proposed algorithm uses a tensor algebra to train a multi-factor model relevant to sEMG signals corresponding to various grasping forces and postures of the wrist and forearm in multiple dimensions. The multi-factor model is then decomposed into four independent factor spaces of the grasping force, sEMG signals, wrist posture, and forearm posture. Moreover, when a participant executes a new posture, new factors for the wrist and forearm are interpolated in the factor spaces. Thus, the grasping force with various postures can be predicted by combining these factors. The effectiveness of the proposed method is verified through experiments with ten healthy subjects, demonstrating the higher performance of proposed grasping force prediction method than the previous algorithm.
机译:使用表面肌电学(SEMG)抓握力估计已经积极研究,因为它可以增加假肢手和机器人手的可操纵性和灵巧。该领域的大多数研究中的研究仅重点关注在不考虑臂姿势的情况下找到SEMG信号和抓取力之间的关系。因此,回归模型不适合于预测各种臂姿势的抓握力。在本文中,开发了一种预测SEMG信号和各种抓地姿势的抓握力的方法。所提出的算法使用张量代数来训练与多个抓握力和手腕和前臂的姿势相对应的SEMG信号相关的多因素模型。然后将多因素模型分解成抓取力,SEMG信号,手腕姿势和前臂姿势的四个独立因子空间。此外,当参与者执行新姿势时,腕带和前臂的新因素在因子空间中插入。因此,通过组合这些因素可以预测具有各种姿势的抓握力。通过具有十个健康受试者的实验验证了所提出的方法的有效性,验证了比先前算法所提出的抓握力预测方法的更高性能。

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