TransGeo: Transformer Is All You Need for Cross-view Image Geo-localization

CVPR 2022  ·  Sijie Zhu, Mubarak Shah, Chen Chen ·

The dominant CNN-based methods for cross-view image geo-localization rely on polar transform and fail to model global correlation. We propose a pure transformer-based approach (TransGeo) to address these limitations from a different perspective. TransGeo takes full advantage of the strengths of transformer related to global information modeling and explicit position information encoding. We further leverage the flexibility of transformer input and propose an attention-guided non-uniform cropping method, so that uninformative image patches are removed with negligible drop on performance to reduce computation cost. The saved computation can be reallocated to increase resolution only for informative patches, resulting in performance improvement with no additional computation cost. This "attend and zoom-in" strategy is highly similar to human behavior when observing images. Remarkably, TransGeo achieves state-of-the-art results on both urban and rural datasets, with significantly less computation cost than CNN-based methods. It does not rely on polar transform and infers faster than CNN-based methods. Code is available at https://github.com/Jeff-Zilence/TransGeo2022.

PDF Abstract CVPR 2022 PDF CVPR 2022 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image-Based Localization cvact Transgeo Recall@1 84.95 # 4
Recall@5 94.14 # 4
Recall@10 95.78 # 4
Recall@1 (%) 98.37 # 4
Image-Based Localization cvusa Transgeo Recall@10 99.04 # 4
Recall@1 94.08 # 4
Recall@5 98.36 # 4
Recall@top1% 99.77 # 4
Image-Based Localization VIGOR Cross Area TransGeo Recall@1 18.99 # 3
Recall@5 38.24 # 3
Recall@10 46.91 # 2
Recall@1% 88.94 # 3
Hit Rate 21.21 # 3
Image-Based Localization VIGOR Same Area TransGeo Recall@1 61.48 # 3
Recall@5 87.54 # 3
Recall@10 91.88 # 2
Recall@1% 99.56 # 3
Hit Rate 73.09 # 3

Methods


No methods listed for this paper. Add relevant methods here