(MGS)$^2$-Net: Unifying Micro-Geometric Scale and Macro-Geometric Structure for Cross-View Geo-Localization
About
Cross-view geo-localization (CVGL) is pivotal for GNSS-denied UAV navigation but remains brittle under the drastic geometric misalignment between oblique aerial views and orthographic satellite references. Existing methods predominantly operate within a 2D manifold, neglecting the underlying 3D geometry where view-dependent vertical facades (macro-structure) and scale variations (micro-scale) severely corrupt feature alignment. To bridge this gap, we propose (MGS)$^2$, a geometry-grounded framework. The core of our innovation is the Macro-Geometric Structure Filtering (MGSF) module. Unlike pixel-wise matching sensitive to noise, MGSF leverages dilated geometric gradients to physically filter out high-frequency facade artifacts while enhancing the view-invariant horizontal plane, directly addressing the domain shift. To guarantee robust input for this structural filtering, we explicitly incorporate a Micro-Geometric Scale Adaptation (MGSA) module. MGSA utilizes depth priors to dynamically rectify scale discrepancies via multi-branch feature fusion. Furthermore, a Geometric-Appearance Contrastive Distillation (GACD) loss is designed to strictly discriminate against oblique occlusions. Extensive experiments demonstrate that (MGS)$^2$ achieves state-of-the-art performance, recording a Recall@1 of 97.5\% on University-1652 and 97.02\% on SUES-200. Furthermore, the framework exhibits superior cross-dataset generalization against geometric ambiguity. The code is available at: \href{https://github.com/GabrielLi1473/MGS-Net}{https://github.com/GabrielLi1473/MGS-Net}.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Cross-view geo-localization | University-1652 Drone -> Satellite | R@197.5 | 69 | |
| Cross-view geo-localization | University-1652 Satellite -> Drone | R@198.57 | 57 | |
| Drone-to-Satellite Retrieval | SUES-200 150m | R@198.95 | 54 | |
| Drone-to-Satellite Retrieval | SUES-200 250m | R@1100 | 54 | |
| Drone-to-Satellite Retrieval | SUES-200 200m | R@1 Accuracy100 | 44 | |
| Drone-to-Satellite Retrieval | SUES-200 300m | R@1100 | 44 | |
| Satellite-to-UAV Retrieval | DenseUAV (test) | R@191.25 | 5 | |
| UAV-to-Satellite Retrieval | DenseUAV (test) | R@181.7 | 5 |