LoD-Loc v2: Aerial Visual Localization over Low Level-of-Detail City Models using Explicit Silhouette Alignment
Juelin Zhu, Shuaibang Peng, Long Wang, Hanlin Tan, Yu Liu, Maojun Zhang, Shen Yan

TL;DR
LoD-Loc v2 introduces an explicit silhouette alignment method for aerial localization over low-LoD city models, enabling accurate drone positioning in less detailed urban environments and outperforming existing approaches.
Contribution
It presents a novel coarse-to-fine localization framework using silhouette alignment and particle filtering for low-LoD city models, expanding the applicability of aerial localization.
Findings
Achieves high accuracy on low-LoD models.
Outperforms state-of-the-art baselines significantly.
Enables localization with low-LoD models for the first time.
Abstract
We propose a novel method for aerial visual localization over low Level-of-Detail (LoD) city models. Previous wireframe-alignment-based method LoD-Loc has shown promising localization results leveraging LoD models. However, LoD-Loc mainly relies on high-LoD (LoD3 or LoD2) city models, but the majority of available models and those many countries plan to construct nationwide are low-LoD (LoD1). Consequently, enabling localization on low-LoD city models could unlock drones' potential for global urban localization. To address these issues, we introduce LoD-Loc v2, which employs a coarse-to-fine strategy using explicit silhouette alignment to achieve accurate localization over low-LoD city models in the air. Specifically, given a query image, LoD-Loc v2 first applies a building segmentation network to shape building silhouettes. Then, in the coarse pose selection stage, we construct a pose…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Remote Sensing and LiDAR Applications · Advanced Neural Network Applications
