Science Score: 36.0%
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○CITATION.cff file
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✓codemeta.json file
Found codemeta.json file -
✓.zenodo.json file
Found .zenodo.json file -
○DOI references
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✓Academic publication links
Links to: arxiv.org -
○Committers with academic emails
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○Institutional organization owner
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○Scientific vocabulary similarity
Low similarity (11.6%) to scientific vocabulary
Keywords
Repository
Code and data for Kuro Siwo flood mapping dataset
Basic Info
- Host: GitHub
- Owner: Orion-AI-Lab
- License: mit
- Language: Python
- Default Branch: main
- Homepage: https://orion-ai-lab.github.io/publication/bountos-2023-kuro/
- Size: 30.7 MB
Statistics
- Stars: 66
- Watchers: 4
- Forks: 7
- Open Issues: 11
- Releases: 0
Topics
Metadata Files
README.md
Kuro Siwo: A global multi-temporal SAR dataset for rapid flood mapping
#### Latest updates: - [✔️] Update codebase for KuroSiwo v2 + updated mean/stds - [✔️] Updated citation - [ ] TODO: Expand README with more elaborate guidelines - [ ] TODO: Upload Kuro-Siwo to HuggingFace

Table of Contents
Download Kuro Siwo
#### GRD Data - The Kuro Siwo GRD Dataset can be downloaded either: - from the following link,
or by executing
scripts/download_kuro_siwo.sh. This script will download and prepare the Kuro Siwo GRDD dataset for deep learning.Usage
1. Make sure to grant the necessary rights by executing `chmod +x scripts/download_kuro_siwo.sh`
2. Execute `scripts/download_kuro_siwo.sh DESIRED_DATASET_ROOT_PATH` e.g: `./download_kuro_siwo.sh KuroRoot`
SLC Data
The SLC Preprocessed products can be downloaded from the following link.
Similarly, the cropped SLC patches (224x224 pixels) can be acquired from the following link.
Data preprocessing
The preprocessing pipelines used to generate the GRD and SLC products can be found at configs/grd_preprocessing.xml and configs/slc_preprocessing.xml repsectively.
Kuro Siwo repo structure
- Kuro Siwo uses the black python formatter. To activate it install pre-commit, running
pip install pre-commitand executepre-commit install. - Training starts by running
python main.py. The configurations are defined in theconfigsdirectory e.g- model,
- training pipeline
- Segmentation,
- change detection
- hyperparameters
main.pysupports command line arguments that override the config files. e.gpython main.py --method=unet --backbone=resnet18 --dem=True --slope=False --batch_size=32
Pretrained models
The weights of the top performing models can be accessed using the following links: - FloodViT - SNUNet
Citation
If you use this work please cite:
@inproceedings{NEURIPS2024_43612b06,
author = {Bountos, Nikolaos Ioannis and Sdraka, Maria and Zavras, Angelos and Karavias, Andreas and Karasante, Ilektra and Herekakis, Themistocles and Thanasou, Angeliki and Michail, Dimitrios and Papoutsis, Ioannis},
booktitle = {Advances in Neural Information Processing Systems},
editor = {A. Globerson and L. Mackey and D. Belgrave and A. Fan and U. Paquet and J. Tomczak and C. Zhang},
pages = {38105--38121},
publisher = {Curran Associates, Inc.},
title = {Kuro Siwo: 33 billion m\^{}2 under the water. A global multi-temporal satellite dataset for rapid flood mapping},
url = {https://proceedings.neurips.cc/paper_files/paper/2024/file/43612b0662cb6a4986edf859fd6ebafe-Paper-Datasets_and_Benchmarks_Track.pdf},
volume = {37},
year = {2024}
}
Owner
- Name: Orion Lab
- Login: Orion-AI-Lab
- Kind: organization
- Email: ipapoutsis@noa.gr
- Location: Greece
- Repositories: 5
- Profile: https://github.com/Orion-AI-Lab
Orion Lab research group: Deep Learning in Earth Observation at the National Observatory of Athens
GitHub Events
Total
- Issues event: 17
- Watch event: 30
- Issue comment event: 25
- Push event: 20
- Pull request event: 2
- Fork event: 5
Last Year
- Issues event: 17
- Watch event: 30
- Issue comment event: 25
- Push event: 20
- Pull request event: 2
- Fork event: 5
Issues and Pull Requests
Last synced: 6 months ago
All Time
- Total issues: 18
- Total pull requests: 4
- Average time to close issues: 11 days
- Average time to close pull requests: about 2 months
- Total issue authors: 12
- Total pull request authors: 2
- Average comments per issue: 1.39
- Average comments per pull request: 0.5
- Merged pull requests: 2
- Bot issues: 0
- Bot pull requests: 0
Past Year
- Issues: 12
- Pull requests: 2
- Average time to close issues: 16 days
- Average time to close pull requests: about 2 months
- Issue authors: 8
- Pull request authors: 1
- Average comments per issue: 1.17
- Average comments per pull request: 0.0
- Merged pull requests: 2
- Bot issues: 0
- Bot pull requests: 0
Top Authors
Issue Authors
- RalphCBY (3)
- Profound-creative (3)
- Multihuntr (3)
- LTT-5 (1)
- hidethethe (1)
- SuperPixelPioneer (1)
- Junghwan-brian (1)
- PatrickTUM (1)
- Frankie91 (1)
- nazarPuriy (1)
- nilsleh (1)
- amitmisra1587 (1)
Pull Request Authors
- Multihuntr (2)
- paren8esis (2)