TL;DR
UAVFF3D is a comprehensive, geometry-aware benchmark dataset designed to improve feed-forward UAV 3D reconstruction, addressing UAV-specific camera variations and enabling robust domain adaptation.
Contribution
The paper introduces UAVFF3D, a large-scale real-synthetic benchmark with a new evaluation protocol for UAV 3D reconstruction, emphasizing camera-geometry variations and robustness.
Findings
Domain adaptation reduces Ray Error by up to 84.2%
It decreases Pose ATE by up to 76.0%
It lowers Chamfer Distance by up to 41.1%
Abstract
Feed-forward 3D reconstruction has advanced rapidly, but current models remain unreliable in UAV photogrammetric acquisition. We argue that this failure is caused not only by appearance-domain shift, but also by UAV-specific camera-geometry variations, especially oblique views and HFOV-height ambiguity. Existing UAV datasets mainly emphasize scene diversity and provide limited coverage of camera configurations, which restricts robustness evaluation and UAV-domain adaptation. To address this gap, we introduce UAVFF3D, a geometry-aware real-synthetic benchmark for feed-forward UAV 3D reconstruction. UAVFF3D contains more than 170k real UAV images and more than 370k synthetic images rendered from high-quality textured 3D models, covering diverse HFOVs, flight altitudes, viewing directions, and acquisition patterns. It also includes a controlled HFOV-height test subset for diagnosing…
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