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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

来源:Arxiv_logoArxiv
英文摘要

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

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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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