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Main Authors: Wang, Yizhuo, He, Haodong, Liang, Jingsong, Cao, Yuhong, Chakraborty, Ritabrata, Sartoretti, Guillaume
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.03027
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author Wang, Yizhuo
He, Haodong
Liang, Jingsong
Cao, Yuhong
Chakraborty, Ritabrata
Sartoretti, Guillaume
author_facet Wang, Yizhuo
He, Haodong
Liang, Jingsong
Cao, Yuhong
Chakraborty, Ritabrata
Sartoretti, Guillaume
contents Path planning in unknown environments is a crucial yet inherently challenging capability for mobile robots, which primarily encompasses two coupled tasks: autonomous exploration and point-goal navigation. In both cases, the robot must perceive the environment, update its belief, and accurately estimate potential information gain on-the-fly to guide planning. In this work, we propose CogniPlan, a novel path planning framework that leverages multiple plausible layouts predicted by a COnditional GeNerative Inpainting model, mirroring how humans rely on cognitive maps during navigation. These predictions, based on the partially observed map and a set of layout conditioning vectors, enable our planner to reason effectively under uncertainty. We demonstrate strong synergy between generative image-based layout prediction and graph-attention-based path planning, allowing CogniPlan to combine the scalability of graph representations with the fidelity and predictiveness of occupancy maps, yielding notable performance gains in both exploration and navigation. We extensively evaluate CogniPlan on two datasets (hundreds of maps and realistic floor plans), consistently outperforming state-of-the-art planners. We further deploy it in a high-fidelity simulator and on hardware, showcasing its high-quality path planning and real-world applicability.
format Preprint
id arxiv_https___arxiv_org_abs_2508_03027
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CogniPlan: Uncertainty-Guided Path Planning with Conditional Generative Layout Prediction
Wang, Yizhuo
He, Haodong
Liang, Jingsong
Cao, Yuhong
Chakraborty, Ritabrata
Sartoretti, Guillaume
Robotics
Path planning in unknown environments is a crucial yet inherently challenging capability for mobile robots, which primarily encompasses two coupled tasks: autonomous exploration and point-goal navigation. In both cases, the robot must perceive the environment, update its belief, and accurately estimate potential information gain on-the-fly to guide planning. In this work, we propose CogniPlan, a novel path planning framework that leverages multiple plausible layouts predicted by a COnditional GeNerative Inpainting model, mirroring how humans rely on cognitive maps during navigation. These predictions, based on the partially observed map and a set of layout conditioning vectors, enable our planner to reason effectively under uncertainty. We demonstrate strong synergy between generative image-based layout prediction and graph-attention-based path planning, allowing CogniPlan to combine the scalability of graph representations with the fidelity and predictiveness of occupancy maps, yielding notable performance gains in both exploration and navigation. We extensively evaluate CogniPlan on two datasets (hundreds of maps and realistic floor plans), consistently outperforming state-of-the-art planners. We further deploy it in a high-fidelity simulator and on hardware, showcasing its high-quality path planning and real-world applicability.
title CogniPlan: Uncertainty-Guided Path Planning with Conditional Generative Layout Prediction
topic Robotics
url https://arxiv.org/abs/2508.03027