Keywords: Coordinated multi-robot navigation, Hierarchical learning
TL;DR: We propose SubTeaming and Adaptive Formation (STAF), a hierarchical learning approach enabling subteam division, formation adaptation, and recovery for coordinated multi-robot navigation in complex scenarios when the entire team cannot pass through.
Abstract: Coordinated multi-robot navigation is essential for robots to operate as a team in diverse environments.
During navigation, robot teams usually need to maintain specific formations, such as circular formations to protect human teammates at the center.
However, in complex scenarios such as narrow corridors, rigidly preserving predefined formations can become infeasible.
Therefore, robot teams must be capable of dynamically splitting into smaller subteams and adaptively controlling the subteams to navigate through such scenarios while preserving formations.
To enable this capability, we introduce a novel method for SubTeaming and Adaptive Formation (STAF), which is built upon a unified hierarchical learning framework:
(1) high-level deep graph cut for team splitting, (2) intermediate-level graph learning for facilitating coordinated navigation among subteams,
and (3) low-level policy learning for controlling individual mobile robots to reach their goal positions while avoiding collisions.
To evaluate STAF, we conducted extensive experiments in both indoor and outdoor environments using robotics simulations and physical robot teams.
Experimental results show that STAF enables the novel capability for subteaming and adaptive formation control, and achieves promising performance in coordinated multi-robot navigation through challenging scenarios.
More details are available on the project website: https://anonymous188.github.io/STAF/.
Spotlight: zip
Submission Number: 634
Loading