AI RESEARCH

Constrained Decoding for Safe Robot Navigation Foundation Models

arXiv CS.LG

ArXi:2509.01728v4 Announce Type: replace-cross Recent advances in the development of robotic foundation models have led to promising end-to-end and general-purpose capabilities in robotic systems. Trained on vast datasets of simulated and real-world trajectories, these policies map multimodal observations directly to action sequences for physical execution. Despite promising real-world capabilities, these models are still data-driven and, therefore, lack explicit notions of behavioral correctness. We address this gap by.