On the Importance of Environments in Human-Robot Coordination
- URL: http://arxiv.org/abs/2106.10853v1
- Date: Mon, 21 Jun 2021 04:39:55 GMT
- Title: On the Importance of Environments in Human-Robot Coordination
- Authors: Matthew C. Fontaine, Ya-Chuan Hsu, Yulun Zhang, Bryon Tjakana and
Stefanos Nikolaidis
- Abstract summary: We propose a framework for procedural generation of environments that result in diverse behaviors.
Results show that the environments result in qualitatively different emerging behaviors and statistically significant differences in collaborative metrics.
- Score: 17.60947307552083
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: When studying robots collaborating with humans, much of the focus has been on
robot policies that coordinate fluently with human teammates in collaborative
tasks. However, less emphasis has been placed on the effect of the environment
on coordination behaviors. To thoroughly explore environments that result in
diverse behaviors, we propose a framework for procedural generation of
environments that are (1) stylistically similar to human-authored environments,
(2) guaranteed to be solvable by the human-robot team, and (3) diverse with
respect to coordination measures. We analyze the procedurally generated
environments in the Overcooked benchmark domain via simulation and an online
user study. Results show that the environments result in qualitatively
different emerging behaviors and statistically significant differences in
collaborative fluency metrics, even when the robot runs the same planning
algorithm.
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