Frontiers in Neuroscience (Oct 2021)

Bayesian Estimation of Potential Performance Improvement Elicited by Robot-Guided Training

  • Asuka Takai,
  • Asuka Takai,
  • Giuseppe Lisi,
  • Tomoyuki Noda,
  • Tatsuya Teramae,
  • Hiroshi Imamizu,
  • Hiroshi Imamizu,
  • Jun Morimoto,
  • Jun Morimoto

DOI
https://doi.org/10.3389/fnins.2021.704402
Journal volume & issue
Vol. 15

Abstract

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Improving human motor performance via physical guidance by an assist robot device is a major field of interest of the society in many different contexts, such as rehabilitation and sports training. In this study, we propose a Bayesian estimation method to predict whether motor performance of a user can be improved or not by the robot guidance from the user’s initial skill level. We designed a robot-guided motor training procedure in which subjects were asked to generate a desired circular hand movement. We then evaluated the tracking error between the desired and actual subject’s hand movement. Results showed that we were able to predict whether a novel user can reduce the tracking error after the robot-guided training from the user’s initial movement performance by checking whether the initial error was larger than a certain threshold, where the threshold was derived by using the proposed Bayesian estimation method. Our proposed approach can potentially help users to decide if they should try a robot-guided training or not without conducting the time-consuming robot-guided movement training.

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