CVMar 20, 2024

ConGeo: Robust Cross-view Geo-localization across Ground View Variations

arXiv:2403.13965v229 citationsh-index: 66ECCV
Originality Incremental advance
AI Analysis

This improves geo-localization for real-world applications with user-captured images, but it is incremental as it enhances existing pipelines.

The paper tackles the problem of cross-view geo-localization by addressing robustness to diverse ground view variations like orientation and field of view, proposing ConGeo, which significantly boosts performance of base models on benchmarks.

Cross-view geo-localization aims at localizing a ground-level query image by matching it to its corresponding geo-referenced aerial view. In real-world scenarios, the task requires accommodating diverse ground images captured by users with varying orientations and reduced field of views (FoVs). However, existing learning pipelines are orientation-specific or FoV-specific, demanding separate model training for different ground view variations. Such models heavily depend on the North-aligned spatial correspondence and predefined FoVs in the training data, compromising their robustness across different settings. To tackle this challenge, we propose ConGeo, a single- and cross-view Contrastive method for Geo-localization: it enhances robustness and consistency in feature representations to improve a model's invariance to orientation and its resilience to FoV variations, by enforcing proximity between ground view variations of the same location. As a generic learning objective for cross-view geo-localization, when integrated into state-of-the-art pipelines, ConGeo significantly boosts the performance of three base models on four geo-localization benchmarks for diverse ground view variations and outperforms competing methods that train separate models for each ground view variation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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