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Estimating Exerted Hand Force via Force Myography to Interact with a Biaxial Stage in Real-Time by Learning Human Intentions: A Preliminary Investigation

机译:通过逼迫幻想映射来估计施加的手力,通过学习人类意图实时与双轴阶段进行互动:初步调查

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摘要

Force myography (FMG) signals can read volumetric changes of muscle movements, while a human participant interacts with the environment. For collaborative activities, FMG signals could potentially provide a viable solution to controlling manipulators. In this paper, a novel method to interact with a two-degree-of-freedom (DoF) system consisting of two perpendicular linear stages using FMG is investigated. The method consists in estimating exerted hand forces in dynamic arm motions of a participant using FMG signals to provide velocity commands to the biaxial stage during interactions. Five different arm motion patterns with increasing complexities, i.e., “x-direction”, “y-direction”, “diagonal”, “square”, and “diamond”, were considered as human intentions to manipulate the stage within its planar workspace. FMG-based force estimation was implemented and evaluated with a support vector regressor (SVR) and a kernel ridge regressor (KRR). Real-time assessments, where 10 healthy participants were asked to interact with the biaxial stage by exerted hand forces in the five intended arm motions mentioned above, were conducted. Both the SVR and the KRR obtained higher estimation accuracies of 90–94% during interactions with simple arm motions (x-direction and y-direction), while for complex arm motions (diagonal, square, and diamond) the notable accuracies of 82–89% supported the viability of the FMG-based interactive control.
机译:力肌动描记(FMG)的信号可以阅读肌肉运动的体积变化,而与环境人类参与者相互作用。对于协作活动,FMG的信号可能会提供一个可行的解决方案来控制机械手。在本文中,一种新颖的方法,以用由使用FMG两个垂直线性阶段的两度的自由度(DOF)系统进行了研究相互作用。该方法在于使用FMG信号相互作用期间提供速度命令到双轴阶段的参与者的动态手臂运动估计施加手的力。随着增加的复杂性,即“x方向”,“y方向”,“对角”,“方形”,和“钻石”,被认为是人的意图五个不同的臂的运动模式来操纵它的平坦工作空间内的阶段。基于FMG-力估计被实施,并用支持向量回归(SVR)和一个内核脊回归(KRR)来评价。实时评估,其中10名健康受试者被要求与在上述五个意图手臂运动施加的手的力量双轴舞台互动,进行了。两者SVR和KRR用简单的臂的运动(x方向和y方向上)的相互作用过程中获得的90-94%更高的估计精度,而对于复杂的臂运动(对角线,正方形和菱形)的82-注目精度89%的人支持基于FMG交互式控制的可行性。

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  • 作者

    Umme Zakia; Carlo Menon;

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  • 年度 2020
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  • 原文格式 PDF
  • 正文语种 eng
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