Topological Motion Planning Diffusion: Generative Tangle-Free Path Planning for Tethered Robots in Obstacle-Rich Environments
arXiv cs.RO / 3/31/2026
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Key Points
- The paper introduces Topological Motion Planning Diffusion (TMPD), a diffusion-based generative framework for tethered robots that must continuously navigate while avoiding cable entanglement in obstacle-rich settings.
- TMPD combines a lifelong topological memory with diffusion-generated, multimodal trajectory candidates spanning multiple homotopy classes, reducing reliance on sequential topology-aware graph search.
- A tether-aware back-end filters and optimizes candidates using generalized winding numbers to score topological energy relative to the accumulated tether configuration.
- In simulated obstacle-rich benchmarks, TMPD reports 100% collision-free reach and a 97.0% tangle-free rate, outperforming both traditional topological search and kinematic diffusion baselines in smoothness and computational efficiency.
- Validation using realistic cable dynamics in simulation suggests the approach is practical for tethered robot operations such as underwater exploration and post-disaster rescue.
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