TL;DR
ANCHOR is a physically grounded, closed-loop framework that enhances robustness in home-service mobile manipulation by aligning symbolic reasoning with physical state and local failure recovery.
Contribution
It introduces a novel framework that integrates physical anchoring, operability-aware navigation, and hierarchical recovery to improve task success in dynamic environments.
Findings
Task success increased from 53.3% to 71.7% with ANCHOR.
Achieved a 71.4% recovery rate under perturbations.
Validated effectiveness across 60 real-robot trials in unseen environments.
Abstract
Recent advances in open-vocabulary mobile manipulation have brought robots into real domestic environments. In such settings, reliable long-horizon execution under open-set object references and frequent disturbances becomes essential. However, many failures persist. These are not caused by semantic misunderstanding but by inconsistencies between symbolic plans and the evolving physical world, manifested as three recurring limitations: (i) existing systems often rely on pre-scanned semantic maps that become inconsistent after scene changes and disturbances; (ii) they select navigation endpoints without considering downstream manipulation feasibility, causing the "arrived but inoperable" problem; and (iii) they handle anomalies through undifferentiated global replanning, which often fails to contain local errors. To address this execution inconsistency, we present ANCHOR, a physically…
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