Hypothesis Graph Refinement: Hypothesis-Driven Exploration with Cascade Error Correction for Embodied Navigation
Peixin Chen, Guoxi Zhang, Jianwei Ma, Qing Li

TL;DR
The paper introduces Hypothesis Graph Refinement (HGR), a framework for embodied navigation that uses revisable hypotheses and cascade correction to improve exploration accuracy and memory reliability.
Contribution
HGR systematically retracts erroneous semantic predictions in graph-based navigation, enhancing long-term exploration and reasoning in partially observed environments.
Findings
HGR achieves 72.41% success rate on GOAT-Bench.
Cascade correction reduces redundant hypotheses by 20%.
Error correction decreases revisits to wrong regions by 4.5 times.
Abstract
Embodied agents must explore partially observed environments while maintaining reliable long-horizon memory. Existing graph-based navigation systems improve scalability, but they often treat unexplored regions as semantically unknown, leading to inefficient frontier search. Although vision-language models (VLMs) can predict frontier semantics, erroneous predictions may be embedded into memory and propagate through downstream inferences, causing structural error accumulation that confidence attenuation alone cannot resolve. These observations call for a framework that can leverage semantic predictions for directed exploration while systematically retracting errors once new evidence contradicts them. We propose Hypothesis Graph Refinement (HGR), a framework that represents frontier predictions as revisable hypothesis nodes in a dependency-aware graph memory. HGR introduces (1) semantic…
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