Verifiable Foundation Models for Robot Safety

arXiv:2606.23754v1 Announce Type: new Abstract: Deploying foundation models for robot control raises a central challenge: the expressive power that enables rich, multimodal perception also makes these models opaque and difficult to analyze formally, rendering them intractable for existing verification tools. In this paper, we present FEARL (Foundation-Enabled Assured Robot Learning), a framework that addresses this tension through a modular architectural decomposition. FEARL separates the policy...

arXiv cs.RO ·Davide Corsi, Kyungmin Kim, Roy Fox ·
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