Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

GUIDE: A Diffusion-Based Autonomous Robot Exploration Framework Using Global Graph Inference

About

Autonomous exploration in structured and complex indoor environments remains a challenging task, as existing methods often struggle to appropriately model unobserved space and plan globally efficient paths. To address these limitations, we propose GUIDE, a novel exploration framework that synergistically combines global graph inference with diffusion-based decision-making. We introduce a region-evaluation global graph representation that integrates both observed environmental data and predictions of unexplored areas, enhanced by a region-level evaluation mechanism to prioritize reliable structural inferences while discounting uncertain predictions. Building upon this enriched representation, a diffusion policy network generates stable, foresighted action sequences with significantly reduced denoising steps. Extensive simulations and real-world deployments demonstrate that GUIDE consistently outperforms state-of-the-art methods, achieving up to 18.3% faster coverage completion and a 34.9% reduction in redundant movements.

Zijun Che, Yinghong Zhang, Shengyi Liang, Boyu Zhou, Jun Ma, Jinni Zhou• 2025

Related benchmarks

TaskDatasetResultRank
Autonomous ExplorationMaze datasets
Distance (m)545
7
Robotic ExplorationGazebo 64m x 85m high-fidelity simulation (Scene 1)
Distance (m)537.2
4
Robotic ExplorationGazebo 92m x 74m high-fidelity simulation (Scene 2)
Distance (m)531.4
4
Showing 3 of 3 rows

Other info

Follow for update