Homotopy-Guided Potential Games for Congestion-Aware Navigation

Journal Article (2026)
Author(s)

M. I.I.Sathyamangalam Imran (Politecnico di Milano)

Lasse Peters (TU Delft - Mechanical Engineering)

Michael Khayyat (Politecnico di Milano)

Stefano Arrigoni (Politecnico di Milano)

Francesco Braghin (Politecnico di Milano)

Laura Ferranti (TU Delft - Mechanical Engineering)

Research Group
Learning & Autonomous Control
DOI related publication
https://doi.org/10.1109/LRA.2026.3675907 Final published version
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Publication Year
2026
Language
English
Research Group
Learning & Autonomous Control
Journal title
IEEE Robotics and Automation Letters
Issue number
5
Volume number
11
Pages (from-to)
5962-5969
Downloads counter
29
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Abstract

We address the multi-Agent motion planning problem where interactions, collisions, and congestion co-exist. Conventional game-Theoretic planners capture interactions among agents but often converge to conservative, congested equilibria. Homotopy planners, on the other hand, can explore topologically distinct paths, but lack mechanisms to account for the interdependence of agents' future actions. We propose a unified framework that leverages homotopy classes as structured strategy sets within a receding-horizon setup. At each planning stage, a deterministic homotopy planner generates topologically distinct paths for each agent, conditioned on the joint configuration. To avoid intractable growth of candidate paths, we propose a simple heuristic filtering step that selects a top-K subset of the most suitable congestion-free joint strategies to ensure computational tractability. These serve as initializations for a potential game that enforces homotopy-consistent constraints and yields a generalized open-loop Nash equilibrium (OLNE), with penalties discouraging abrupt strategy shifts in a receding-horizon setting. Simulations with three agents demonstrate improved efficiency (faster completion) and enhanced safety (greater inter-Agent clearance, leading to reduced congestion) compared to a local baseline and NH-ORCA that do not reason about homotopies. Hardware trials with two robots and one human demonstrate robustness to irrational behaviors, where our method adapts by switching to alternative feasible equilibria while the baseline game fails.

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