An Optimal Assistive Control Strategy based on User's Motor Goal Estimation
Jun-ichiro Furukawa, Jun Morimoto

TL;DR
This paper introduces an optimal assistive control method that estimates user intentions from movement data and blends pre-computed control laws to improve assistive task performance, validated through basketball throwing experiments.
Contribution
It presents a novel control strategy that estimates user motor goals in real-time and adaptively blends control laws for improved assistive device performance.
Findings
Improved basketball throwing accuracy with the proposed method
Effective estimation of user movement intention from short-term data
Enhanced assistive control performance demonstrated in experiments
Abstract
In this study, we propose an optimal assistive control strategy that uses estimated user's movement intention as the terminal cost function. We estimate the movement intention by observing human user's joint angle, angluar velocity, and muscle activities for very short period of time. A task-related low-dimensional feature space is extracted from the observed user's movement data. We assume that discrete number of optimal control laws associated to different target tasks are pre-computed. Then, the optimal assistive policy is derived by blending the pre-computed optimal control laws based on the linear Bellman combination method. Coefficients that determine how to blend the control laws are derived based on the low-dimensional feature value that represents the user's movement intention. To validate our proposed method, we conducted basketball throwing tasks. In these experiments,…
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Taxonomy
TopicsMuscle activation and electromyography studies · Prosthetics and Rehabilitation Robotics · Motor Control and Adaptation
