GUIDE: A Diffusion-Based Autonomous Robot Exploration Framework Using Global Graph Inference
Che, Zijun, Zhang, Yinghong, Liang, Shengyi, Zhou, Boyu, Ma, Jun, Zhou, Jinni
–arXiv.org Artificial Intelligence
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.
arXiv.org Artificial Intelligence
Sep-26-2025