Score: 1

REALM: Real-Time Estimates of Assistance for Learned Models in Human-Robot Interaction

Published: April 12, 2025 | arXiv ID: 2504.09243v1

By: Michael Hagenow, Julie A. Shah

BigTech Affiliations: Massachusetts Institute of Technology

Potential Business Impact:

Robot learns best way to get your help.

Business Areas:
Robotics Hardware, Science and Engineering, Software

There are a variety of mechanisms (i.e., input types) for real-time human interaction that can facilitate effective human-robot teaming. For example, previous works have shown how teleoperation, corrective, and discrete (i.e., preference over a small number of choices) input can enable robots to complete complex tasks. However, few previous works have looked at combining different methods, and in particular, opportunities for a robot to estimate and elicit the most effective form of assistance given its understanding of a task. In this paper, we propose a method for estimating the value of different human assistance mechanisms based on the action uncertainty of a robot policy. Our key idea is to construct mathematical expressions for the expected post-interaction differential entropy (i.e., uncertainty) of a stochastic robot policy to compare the expected value of different interactions. As each type of human input imposes a different requirement for human involvement, we demonstrate how differential entropy estimates can be combined with a likelihood penalization approach to effectively balance feedback informational needs with the level of required input. We demonstrate evidence of how our approach interfaces with emergent learning models (e.g., a diffusion model) to produce accurate assistance value estimates through both simulation and a robot user study. Our user study results indicate that the proposed approach can enable task completion with minimal human feedback for uncertain robot behaviors.

Country of Origin
🇺🇸 United States

Page Count
8 pages

Category
Computer Science:
Robotics