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Each Part Matters: Local Patterns Facilitate Cross-view Geo-localization

About

Cross-view geo-localization is to spot images of the same geographic target from different platforms, e.g., drone-view cameras and satellites. It is challenging in the large visual appearance changes caused by extreme viewpoint variations. Existing methods usually concentrate on mining the fine-grained feature of the geographic target in the image center, but underestimate the contextual information in neighbor areas. In this work, we argue that neighbor areas can be leveraged as auxiliary information, enriching discriminative clues for geolocalization. Specifically, we introduce a simple and effective deep neural network, called Local Pattern Network (LPN), to take advantage of contextual information in an end-to-end manner. Without using extra part estimators, LPN adopts a square-ring feature partition strategy, which provides the attention according to the distance to the image center. It eases the part matching and enables the part-wise representation learning. Owing to the square-ring partition design, the proposed LPN has good scalability to rotation variations and achieves competitive results on three prevailing benchmarks, i.e., University-1652, CVUSA and CVACT. Besides, we also show the proposed LPN can be easily embedded into other frameworks to further boost performance.

Tingyu Wang, Zhedong Zheng, Chenggang Yan, Jiyong Zhang, Yaoqi Sun, Bolun Zheng, Yi Yang• 2020

Related benchmarks

TaskDatasetResultRank
Cross-view geo-localizationUniversity-1652 Drone -> Satellite
R@186.06
69
Cross-view geo-localizationUniversity-1652 Satellite -> Drone
R@191.44
57
Cross-view geo-localizationCVUSA
Rank@192.83
55
Drone-to-Satellite RetrievalSUES-200 150m
R@193.75
54
Drone-to-Satellite RetrievalSUES-200 250m
R@197.5
54
Cross-view geo-localizationCVACT (val)
R@183.66
47
Drone-to-Satellite RetrievalSUES-200 300m
R@1100
44
Drone-to-Satellite RetrievalSUES-200 200m
R@1 Accuracy97.5
44
Cross-view geo-localizationVIGOR (Cross-Area)
Rank@18.2
40
Cross-view geo-localizationVIGOR (Same-Area)
R@133.93
40
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