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Where am I looking at? Joint Location and Orientation Estimation by Cross-View Matching

About

Cross-view geo-localization is the problem of estimating the position and orientation (latitude, longitude and azimuth angle) of a camera at ground level given a large-scale database of geo-tagged aerial (e.g., satellite) images. Existing approaches treat the task as a pure location estimation problem by learning discriminative feature descriptors, but neglect orientation alignment. It is well-recognized that knowing the orientation between ground and aerial images can significantly reduce matching ambiguity between these two views, especially when the ground-level images have a limited Field of View (FoV) instead of a full field-of-view panorama. Therefore, we design a Dynamic Similarity Matching network to estimate cross-view orientation alignment during localization. In particular, we address the cross-view domain gap by applying a polar transform to the aerial images to approximately align the images up to an unknown azimuth angle. Then, a two-stream convolutional network is used to learn deep features from the ground and polar-transformed aerial images. Finally, we obtain the orientation by computing the correlation between cross-view features, which also provides a more accurate measure of feature similarity, improving location recall. Experiments on standard datasets demonstrate that our method significantly improves state-of-the-art performance. Remarkably, we improve the top-1 location recall rate on the CVUSA dataset by a factor of 1.5x for panoramas with known orientation, by a factor of 3.3x for panoramas with unknown orientation, and by a factor of 6x for 180-degree FoV images with unknown orientation.

Yujiao Shi, Xin Yu, Dylan Campbell, Hongdong Li• 2020

Related benchmarks

TaskDatasetResultRank
Cross-view geo-localizationCVUSA
Rank@193.57
55
Cross-view geo-localizationCVACT (test)
R@135.63
50
Cross-view geo-localizationCVACT (val)
R@182.49
47
Cross-view geo-localizationCVUSA (test)
R@1%99.67
28
Cross-view geo-localizationVIGOR-Graph 1.0 (test)
Top-1 Accuracy6.19
28
Cross-view geo-localizationSpaGBOL 1.0 (test)
Top-1 Accuracy5.82
28
Geo-localizationCVACT
R@183.88
19
Cross-view geo-localizationCVUSA FoV=90°
R@133.66
18
Cross-view geo-localizationCVUSA FoV=70°
R@1 Accuracy20.88
18
Cross-view geo-localizationCVACT 90° orientation
R@131.17
13
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