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arxiv: 2507.20021 · v3 · submitted 2025-07-26 · 💻 cs.RO · cs.AI· cs.LG

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When Engineering Outruns Intelligence: Rethinking Instruction-Guided Navigation

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classification 💻 cs.RO cs.AIcs.LG
keywords frontierlanguagedetector-controlledgeometryinstruction-guidedmuchaccountsaccuracy
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Recent ObjectNav systems credit large language models (LLMs) for sizable zero-shot gains, yet it remains unclear how much comes from language versus geometry. We revisit this question by re-evaluating an instruction-guided pipeline, InstructNav, under a detector-controlled setting and introducing two training-free variants that only alter the action value map: a geometry-only Frontier Proximity Explorer (FPE) and a lightweight Semantic-Heuristic Frontier (SHF) that polls the LLM with simple frontier votes. Across HM3D and MP3D, FPE matches or exceeds the detector-controlled instruction follower while using no API calls and running faster; SHF attains comparable accuracy with a smaller, localized language prior. These results suggest that carefully engineered frontier geometry accounts for much of the reported progress, and that language is most reliable as a light heuristic rather than an end-to-end planner. Code available at: https://github.com/matinaghaei/instructnav-scrutinized

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