In real-world human-robot systems, it is essential for a robot to comprehend human objectives and respond accordingly while performing an extended series of motor actions. Although human objective alignment has recently emerged as a promising paradigm in the realm of physical human-robot interaction, its application is typically confined to generating simple motions due to inherent theoretical limitations. In this work, our goal is to develop a general formulation to learn manipulation functional modules and long-term task goals simultaneously from physical human-robot interaction. We show the feasibility of our framework in enabling robots to align their behaviors with the long-term task objectives inferred from human interactions.
@article{arxiv.2309.04596,
title = {Learning Task Skills and Goals Simultaneously from Physical Interaction},
author = {Haonan Chen and Ye-Ji Mun and Zhe Huang and Yilong Niu and Yiqing Xie and D. Livingston McPherson and Katherine Driggs-Campbell},
journal= {arXiv preprint arXiv:2309.04596},
year = {2023}
}
Comments
2 pages, 1 figure. Accepted by CASE 2023 Special Session on The Next-Generation Resilient Cyber-Physical Manufacturing Networks