Learning to Navigate Under Imperfect Perception: Conformalised Segmentation for Safe Reinforcement Learning
Abstract
Reliable navigation in safety-critical environments requires both accurate hazard perception and principled uncertainty handling to strengthen downstream safety handling. Despite the effectiveness of existing approaches, they assume perfect hazard detection capabilities, while uncertainty-aware perception approaches lack finite-sample guarantees. We present COPPOL, a conformal-driven perception-to-policy learning approach that integrates distribution-free, finite-sample safety guarantees into semantic segmentation, yielding calibrated hazard maps with rigorous bounds for missed detections. These maps induce risk-aware cost fields for downstream RL planning. Across two satellite-derived benchmarks, COPPOL increases hazard coverage (up to 6x) compared to comparative baselines, achieving near-complete detection of unsafe regions while reducing hazardous violations during navigation (up to approx 50%). More importantly, our approach remains robust to distributional shift, preserving both safety and efficiency.
Cite
@article{arxiv.2510.18485,
title = {Learning to Navigate Under Imperfect Perception: Conformalised Segmentation for Safe Reinforcement Learning},
author = {Daniel Bethell and Simos Gerasimou and Radu Calinescu and Calum Imrie},
journal= {arXiv preprint arXiv:2510.18485},
year = {2025}
}