English

Task-Based Hybrid Shared Control for Training Through Forceful Interaction

Robotics 2019-11-20 v1 Human-Computer Interaction

Abstract

Despite the fact that robotic platforms can provide both consistent practice and objective assessments of users over the course of their training, there are relatively few instances where physical human robot interaction has been significantly more effective than unassisted practice or human-mediated training. This paper describes a hybrid shared control robot, which enhances task learning through kinesthetic feedback. The assistance assesses user actions using a task-specific evaluation criterion and selectively accepts or rejects them at each time instant. Through two human subject studies (total n=68), we show that this hybrid approach of switching between full transparency and full rejection of user inputs leads to increased skill acquisition and short-term retention compared to unassisted practice. Moreover, we show that the shared control paradigm exhibits features previously shown to promote successful training. It avoids user passivity by only rejecting user actions and allowing failure at the task. It improves performance during assistance, providing meaningful task-specific feedback. It is sensitive to initial skill of the user and behaves as an `assist-as-needed' control scheme---adapting its engagement in real time based on the performance and needs of the user. Unlike other successful algorithms, it does not require explicit modulation of the level of impedance or error amplification during training and it is permissive to a range of strategies because of its evaluation criterion. We demonstrate that the proposed hybrid shared control paradigm with a task-based minimal intervention criterion significantly enhances task-specific training.

Keywords

Cite

@article{arxiv.1911.07983,
  title  = {Task-Based Hybrid Shared Control for Training Through Forceful Interaction},
  author = {Kathleen Fitzsimons and Aleksandra Kalinowska and Julius P. A. Dewald and Todd Murphey},
  journal= {arXiv preprint arXiv:1911.07983},
  year   = {2019}
}

Comments

16 pages, submitted to the International Journal of Robotics Research

R2 v1 2026-06-23T12:20:00.887Z