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Seeing is Believing: Belief-Space Planning with Foundation Models as Uncertainty Estimators

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arxiv 2504.03245 v1 pith:GZLZHBMJ submitted 2025-04-04 cs.AI cs.RO

Seeing is Believing: Belief-Space Planning with Foundation Models as Uncertainty Estimators

classification cs.AI cs.RO
keywords planningsymbolicapproachbelief-spaceinformationobservabilityuncertaintyvlms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generalizable robotic mobile manipulation in open-world environments poses significant challenges due to long horizons, complex goals, and partial observability. A promising approach to address these challenges involves planning with a library of parameterized skills, where a task planner sequences these skills to achieve goals specified in structured languages, such as logical expressions over symbolic facts. While vision-language models (VLMs) can be used to ground these expressions, they often assume full observability, leading to suboptimal behavior when the agent lacks sufficient information to evaluate facts with certainty. This paper introduces a novel framework that leverages VLMs as a perception module to estimate uncertainty and facilitate symbolic grounding. Our approach constructs a symbolic belief representation and uses a belief-space planner to generate uncertainty-aware plans that incorporate strategic information gathering. This enables the agent to effectively reason about partial observability and property uncertainty. We demonstrate our system on a range of challenging real-world tasks that require reasoning in partially observable environments. Simulated evaluations show that our approach outperforms both vanilla VLM-based end-to-end planning or VLM-based state estimation baselines by planning for and executing strategic information gathering. This work highlights the potential of VLMs to construct belief-space symbolic scene representations, enabling downstream tasks such as uncertainty-aware planning.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Hypothesis-driven Model Expansion under Uncertainty for Open-World Robot Planning

    cs.RO 2026-07 conditional novelty 6.5

    HUME lets robots generate, plan over, and actively verify object-centric hypotheses from foundation models so incomplete symbolic models become usable for open-world household tasks.