CVGL: Causal Learning and Geometric Topology
arXiv cs.CV / 3/16/2026
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Key Points
- The paper introduces CLGT, a framework for cross-view geo-localization that matches street images with aerial images to improve autonomous navigation and mapping.
- It includes a Causal Feature Extractor (CFE) that uses causal intervention to reduce confounding factors and emphasize stable, task-relevant semantics.
- It also features Geometric Topology Fusion (GT Fusion) to inject Bird's Eye View (BEV) road topology into street features, alleviating cross-view inconsistencies from extreme perspective changes.
- A Data-Adaptive Pooling (DA Pooling) module enhances representation of semantically rich regions, with extensive experiments showing state-of-the-art performance on CVUSA, CVACT and robustness-enhanced variants; code is available on GitHub.
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