Belief-Conditioned One-Step Diffusion: Real-Time Trajectory Planning with Just-Enough Sensing
Gokul Puthumanaillam, Aditya Penumarti, Manav Vora, Paulo Padrao, Jose Fuentes, Leonardo Bobadilla, Jane Shin, Melkior Ornik

TL;DR
This paper introduces B-COD, a real-time planner that determines minimal sensor activation for robots to maintain just-enough localization accuracy, reducing energy use without sacrificing task success.
Contribution
The paper presents B-COD, the first diffusion-based planner conditioned on belief and sensor data that efficiently predicts localization error and guides sensor selection in real-time.
Findings
Reduces sensing energy consumption in marine robot trials.
Matches performance of always-on sensor baseline.
Operates with a 10 ms forward pass for trajectory and sensor decision.
Abstract
Robots equipped with rich sensor suites can localize reliably in partially-observable environments, but powering every sensor continuously is wasteful and often infeasible. Belief-space planners address this by propagating pose-belief covariance through analytic models and switching sensors heuristically--a brittle, runtime-expensive approach. Data-driven approaches--including diffusion models--learn multi-modal trajectories from demonstrations, but presuppose an accurate, always-on state estimate. We address the largely open problem: for a given task in a mapped environment, which \textit{minimal sensor subset} must be active at each location to maintain state uncertainty \textit{just low enough} to complete the task? Our key insight is that when a diffusion planner is explicitly conditioned on a pose-belief raster and a sensor mask, the spread of its denoising trajectories yields a…
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