This repository provides the dataset and code used in "VIGOR : Cross-View Image Geo-localization beyond One-to-one Retrieval".
@inproceedings{zhu2021vigor,
title={VIGOR: Cross-View Image Geo-localization beyond One-to-one Retrieval},
author={Zhu, Sijie and Yang, Taojiannan and Chen, Chen},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={3640--3649},
year={2021}
}
Please follow the guideline to download and prepare the dataset.
- Python >= 3.5, Opencv, Numpy, Matplotlib
- Tensorflow == 1.13.1
Download the same-area models and npy files from the link, unzip (tar -zxvf) it in "./data/". Then run the script:
python evaluate_from_npy.py
Download the initialization weights from ImageNet, put it in "./data/". Then run the script to train a simple SAFA baseline:
python train_SAFA.py
Run the script to train with our method:
python train_overall.py
- https://github.com/shiyujiao/cross_view_localization_SAFA
- https://github.com/Jeff-Zilence/Explain_Metric_Learning
- https://github.com/david-husx/crossview_localisation.git