ASIP-Planner: Adaptive Planning for UAV Surface Inspection in Partially Known Indoor Environments
Hanyu Jin, Zhefan Xu, Haoyu Shen, Xinming Han, Kanlong Ye, and Kenji Shimada

TL;DR
This paper introduces an adaptive UAV inspection framework that combines global coverage planning with local view-angle adjustments to improve indoor surface inspection in environments with unforeseen obstacles.
Contribution
It presents a novel integrated planning approach that enhances inspection coverage and robustness in partially known indoor environments, outperforming existing methods.
Findings
Near-complete coverage achieved in simulations
Reduced trajectory length compared to baselines
Validated effectiveness through real-world experiments
Abstract
Indoor infrastructure inspection, such as tunnels and industrial facilities, requires systematic surface coverage to ensure that all inspection targets are properly observed. Unmanned Aerial Vehicles (UAVs) offer an alternative to manual inspection by conducting map-guided surface inspection using prior structural models. However, in practice, indoor inspection often relies on floorplan-derived reference maps that may not reflect unforeseen obstacles, such as temporary structures or equipment, leading to occluded viewpoints and degraded inspection quality. Existing coverage planning methods typically assume a fully known inspection environment and perform deterministic global viewpoint optimization based on accurate prior maps, making them vulnerable to environmental discrepancies during execution. This work presents an adaptive UAV inspection framework for partially known structured…
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