Geocapsnet: Aerial To Ground View Image Geo-localization Using Capsule Network | Awesome Learning to Hash Add your paper to Learning2Hash

Geocapsnet: Aerial To Ground View Image Geo-localization Using Capsule Network

Bin Sun, Chen Chen, Yingying Zhu, Jianmin Jiang . Arxiv 2019 – 7 citations

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Datasets Distance Metric Learning Evaluation Image Retrieval

The task of cross-view image geo-localization aims to determine the geo-location (GPS coordinates) of a query ground-view image by matching it with the GPS-tagged aerial (satellite) images in a reference dataset. Due to the dramatic changes of viewpoint, matching the cross-view images is challenging. In this paper, we propose the GeoCapsNet based on the capsule network for ground-to-aerial image geo-localization. The network first extracts features from both ground-view and aerial images via standard convolution layers and the capsule layers further encode the features to model the spatial feature hierarchies and enhance the representation power. Moreover, we introduce a simple and effective weighted soft-margin triplet loss with online batch hard sample mining, which can greatly improve image retrieval accuracy. Experimental results show that our GeoCapsNet significantly outperforms the state-of-the-art approaches on two benchmark datasets.

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