Stratified Topological Autonomy for Long-Range Coordination (STALC)
arXiv cs.RO / 3/24/2026
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Key Points
- The paper introduces STALC, a hierarchical planning framework for multi-robot coordination that explicitly handles long-range spatial and temporal dependencies in real-world environments.
- STALC uses a graph-based multi-robot planner paired with an efficient mixed-integer programming formulation to compute tightly coupled multi-robot plans quickly (on the order of seconds).
- It constructs multi-scale graphs that represent connectivity among free-space regions and incorporate application-specific features like traversability and risk.
- The method combines a receding-horizon strategy for local collision avoidance and formation control with higher-level planning to maintain coordinated behavior over time.
- The authors validate STALC using both simulations (multi-robot reconnaissance minimizing detection risk) and hardware experiments, showing scalability and successful planning from real-world data through the full hierarchy.
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