PECMAN: Perception-enabled Collaborative Multi-Agent Navigation in Unknown Environments
Tianchonghui Fang, Shaunak Roy, Shalabh Gupta

TL;DR
PECMAN introduces perception-enabled collaborative multi-agent navigation with real-time replanning and shared perception, significantly improving efficiency and success rates in unknown environments through distributed tree morphing.
Contribution
It extends SMART-3D to multi-agent scenarios with perception sharing, enabling proactive replanning and reducing redundant reactions in unknown environments.
Findings
Up to 52% reduction in team completion time.
Near 100% success rate in multi-agent navigation.
Validated with real robots in building environments.
Abstract
Most path planners assume fully known, static environments, assumptions that fail when robots navigate in dynamic and partially observable environments. SMART-3D addresses these issues by real-time replanning, where it morphs the underlying RRT* tree whenever new obstacles or structures are discovered in the environment. Instead of rebuilding the tree entirely from scratch, SMART-3D prunes invalid nodes and edges and subsequently repairs the disjoint subtrees at hot-nodes to find a new path, thus providing high computational efficiency for real-time adaptability. We extend SMART-3D to perception-enabled collaborative multi-agent navigation (PECMAN) in unknown environments. PECMAN is built upon distributed tree morphing and shared perception strategies, where each agent reacts to environmental changes and morphs its respective tree to replan its path, while simultaneously broadcasting…
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