Risk-Guided Diffusion: Toward Deploying Robot Foundation Models in Space, Where Failure Is Not An Option
Risk-Guided Diffusion: Toward Deploying Robot Foundation Models in Space, Where Failure Is Not An Option
Safe, reliable navigation in extreme, unfamiliar terrain is required for future robotic space exploration missions. Recent generative-AI methods learn semantically aware navigation policies from large, cross-embodiment datasets, but offer limited safety guarantees. Inspired by human cognitive science, we propose a risk-guided diffusion framework that fuses a fast, learned "System-1" with a slow, physics-based "System-2", sharing computation at both training and inference to couple adaptability with formal safety. Hardware experiments conducted at the NASA JPL's Mars-analog facility, Mars Yard, show that our approach reduces failure rates by up to $4\times$ while matching the goal-reaching performance of learning-based robotic models by leveraging inference-time compute without any additional training.
Rohan Thakker、Adarsh Patnaik、Vince Kurtz、Jonas Frey、Jonathan Becktor、Sangwoo Moon、Rob Royce、Marcel Kaufmann、Georgios Georgakis、Pascal Roth、Joel Burdick、Marco Hutter、Shehryar Khattak
航空航天技术航天
Rohan Thakker,Adarsh Patnaik,Vince Kurtz,Jonas Frey,Jonathan Becktor,Sangwoo Moon,Rob Royce,Marcel Kaufmann,Georgios Georgakis,Pascal Roth,Joel Burdick,Marco Hutter,Shehryar Khattak.Risk-Guided Diffusion: Toward Deploying Robot Foundation Models in Space, Where Failure Is Not An Option[EB/OL].(2025-06-21)[2025-07-25].https://arxiv.org/abs/2506.17601.点此复制
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