Archive/Closer Nap-of-the-Object Photogrammetry with Geographic Neural Radiance Fields
Closer Nap-of-the-Object Photogrammetry with Geographic Neural Radiance Fields
Haoyu Liu, Yizhi Zou, Lu Yang et al.
July 9, 2026
en

Abstract

High-precision 3D reconstruction of objects with complex surfaces, such as ancient architecture and detailed artworks, requires close-range image acquisition, which remains challenging for Unmanned Aerial Vehicle (UAV) systems. The operational proximity of current UAV workflows is often insufficient to capture fine geometric and textural details, limiting high-fidelity digitization. This paper presents a georeferenced NeRF-based UAV acquisition framework for automated waypoint planning and supervised close-proximity execution. The core of the framework is a path-planning module that operates on a metric geometric prior established through Geographic Neural Radiance Fields (Geo-NeRF), which denotes a georeferenced NeRF modeling pipeline rather than a new NeRF architecture or loss function. By generating waypoints directly on this neural representation and optimizing the flight path via a nearest-neighbor strategy, the proposed framework supports close-proximity image acquisition for static targets under controlled conditions. Empirical validation demonstrates improved close-range flight proximity, photographic accuracy, and 3D reconstruction fidelity compared with the evaluated baselines.

IPC Classification

G06B60

Keywords

closernap-of-the-objectphotogrammetrygeographicneuralradiancefieldsdroneshigh-precisionreconstructionobjectscomplexsurfacessuchancientarchitecturedetailedartworksrequiresclose-rangeimageacquisitionwhichremains
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