EuroCrops
A dataset collection combining all publicly available self-declared crop reporting datasets from countries of the European Union.
https://github.com/maja601/eurocrops
Category: Consumption
Sub Category: Agriculture and Nutrition
Keywords
agriculture dataset deep-learning machine-learning opendata sentinel-2
Last synced: 16 minutes ago
JSON representation
Repository metadata
The official repository for the EuroCrops dataset.
- Host: GitHub
- URL: https://github.com/maja601/eurocrops
- Owner: maja601
- License: cc-by-sa-4.0
- Created: 2021-08-20T08:11:28.000Z (over 3 years ago)
- Default Branch: main
- Last Pushed: 2025-04-24T12:45:57.000Z (3 days ago)
- Last Synced: 2025-04-25T13:43:16.216Z (2 days ago)
- Topics: agriculture, dataset, deep-learning, machine-learning, opendata, sentinel-2
- Language: Jupyter Notebook
- Homepage:
- Size: 1.86 MB
- Stars: 188
- Watchers: 15
- Forks: 25
- Open Issues: 10
- Releases: 0
-
Metadata Files:
- Readme: README.md
- License: LICENSE
README.md
Border Region Austria - Slovakia around Bratislava
EuroCrops
EuroCrops is a dataset collection combining all publicly available self-declared crop reporting datasets from countries of the European Union.
The project is funded by the German Space Agency at DLR on behalf of the Federal Ministry for Economic Affairs and Climate Action (BMWK).
This work is licensed under a
Creative Commons Attribution-ShareAlike 4.0 International License.
Right now EuroCrops only includes vector data, but stay tuned for a version that includes satellite imagery!
For any questions, please refer to our FAQs or use the Discussions/Issues to reach out to us.
Content
- Background
- Hamonisation with HCAT
- Participating countries
- GitHub project structure
- Vector data download via zenodo
- Vector data download via Sync&Share (old)
- Reference
Background
Disclaimer: The Nomenclature of Territorial Units for Statistics 3 (NUTS3) region, which we added by hand, is just an approximate assignment of a crop parcel to a region.
It might happen that a parcel is not correctly allocated to the right region or country.
The NUTS3 attribute is only meant to be an aid for a meaningful spatial division of the dataset into training, validation and test sets.
Hamonisation with HCAT
The raw data obtained from the countries does not come in a unified, machine-readable taxonomy. We, therefore, developed a new Hierarchical Crop and Agriculture Taxonomy (HCAT) that harmonises all declared crops across the European Union. In the shapefiles you'll find this as additional attributes:
Attribute Name | Explanation |
---|---|
EC_trans_n | The original crop name translated into English |
EC_hcat_n | The machine-readable HCAT name of the crop |
EC_hcat_c | The 10-digit HCAT code indicating the hierarchy of the crop |
Participating countries
Find detailed information for all countries of the European Union in our Wiki, especially the countries represented in EuroCrops:
- Austria
- Belgium
- Czechia
- Germany
- Denmark
- Estonia
- Spain
- France
- Croatia
- Lithuania
- Latvia
- Netherlands
- Portugal
- Romania
- Sweden
- Slovenia
- Slovakia
GitHub project structure
├── csvs
│ ├── country_mappings
│ └── [CSV mapping files for all participating countries]
└── hcat_core
└── HCAT.csv
Vector data download via zenodo
The vector data is now available via zenodo, currently we are on Version 11!
Version 1)
Vector data download via Sync&Share (onlyThe shapefiles of the countries are available via Sync&Share. Please also make sure to download the data for the countries individually, as there might be some loss otherwise.
├── AT
│ └── AT_2021_EC21.*
├── BE
│ └── VLG
│ └── BE_VLG_2021_EC21.*
├── DE
│ ├── LS
│ | └── DE_LS_2021_EC21.*
│ └── NRW
│ └── DE_NRW_2021_EC21.*
├── DK
│ └── DK_2019_EC21.*
├── EE
│ └── EE_2021_EC21.*
├── ES
│ └── NA
│ └── ES_NA_2020_EC21.*
├── FR
│ └── FR_2018_EC21.*
├── HR
│ └── HR_2020_EC21.*
├── LT
│ └── LT_2021_EC.*
├── LV
│ └── LV_2021_EC21.*
├── NL
│ └── NL_2021_EC21.*
├── PT
│ └── PT_2021_EC21.*
├── RO
│ └── RO_ny_EC21.*
├── SE
│ └── SE_2021_EC21.*
├── SI
│ └── SI_2021_EC21.*
└── SK
└── SK_2021_EC21.*
Reference
Disclaimer: Please reference the countries' dependent source in case you're using their data.
@Article{schneider2023eurocrops,
title = {{EuroCrops}: {The} {Largest} {Harmonized} {Open} {Crop} {Dataset} {Across} the {European} {Union}},
volume = {10},
copyright = {All rights reserved},
issn = {2052-4463},
url = {https://doi.org/10.1038/s41597-023-02517-0},
doi = {10.1038/s41597-023-02517-0},
number = {1},
journal = {Scientific Data},
author = {Schneider, Maja and Schelte, Tobias and Schmitz, Felix and Körner, Marco},
month = sep,
year = {2023},
pages = {612},
}
Additional references:
@Misc{schneider2022eurocrops21,
author = {Schneider, Maja and K{\"o}rner, Marco},
title = {EuroCrops},
DOI = {10.5281/zenodo.6866846},
type = {Dataset},
publisher = {Zenodo},
year = {2022}
}
@InProceedings{Schneider2022Challenges,
title = {Challenges and Opportunities of Large Transnational Datasets: A Case Study on European Administrative Crop Data},
author = {Schneider, Maja and Marchington, Christian and K{\"o}rner, Marco},
booktitle = {Workshop on Broadening Research Collaborations in ML (NeurIPS 2022)},
year = {2022}
}
@InProceedings{Schneider2022Harnessing,
title = {Harnessing Administrative Data Inventories to Create a Reliable Transnational Reference Database for Crop Type Monitoring},
author = {Schneider, Maja and K{\"o}rner, Marco},
booktitle = {IGARSS 2022-2022 IEEE International Geoscience and Remote Sensing Symposium},
pages = {5385--5388},
year = {2022},
organization = {IEEE}
}
@InProceedings{Schneider2021EPE,
author = {Schneider, Maja and Broszeit, Amelie and K{\"o}rner, Marco},
booktitle = {Proceedings of the Conference on Big Data from Space (BiDS)},
title = {{EuroCrops}: A Pan-European Dataset for Time Series Crop Type Classification},
editor = {Soille, Pierre and Loekken, Sveinung and Albani, Sergio},
publisher = {Publications Office of the European Union},
date = {2021-05-18},
doi = {10.2760/125905},
eprint = {2106.08151},
eprintclass = {eess.IV,cs.CV,cs.LG},
eprinttype = {arxiv}
}
@Misc{Schneider2021TEC,
author = {Schneider, Maja and K{\"o}rner, Marco},
date = {2021-06-15},
title = {{TinyEuroCrops}},
doi = {10.14459/2021MP1615987},
organization = {Technical University of Munich (TUM)},
type = {Dataset},
url = {https://mediatum.ub.tum.de/1615987}
}
Owner metadata
- Name: Maja
- Login: maja601
- Email:
- Kind: user
- Description:
- Website:
- Location: Munich
- Twitter: Maja4EO
- Company: Technical University of Munich
- Icon url: https://avatars.githubusercontent.com/u/22978370?u=46116eaaf1ffa1978ad99710d81a608211d5ee6d&v=4
- Repositories: 6
- Last ynced at: 2024-06-11T15:55:48.320Z
- Profile URL: https://github.com/maja601
GitHub Events
Total
- Issues event: 1
- Watch event: 21
- Issue comment event: 1
- Push event: 10
- Pull request review event: 1
- Pull request event: 2
- Gollum event: 7
- Fork event: 2
Last Year
- Issues event: 1
- Watch event: 21
- Issue comment event: 1
- Push event: 10
- Pull request review event: 1
- Pull request event: 2
- Gollum event: 7
- Fork event: 2
Committers metadata
Last synced: 6 days ago
Total Commits: 116
Total Committers: 10
Avg Commits per committer: 11.6
Development Distribution Score (DDS): 0.509
Commits in past year: 10
Committers in past year: 4
Avg Commits per committer in past year: 2.5
Development Distribution Score (DDS) in past year: 0.3
Name | Commits | |
---|---|---|
Maja | m****r@t****e | 57 |
Ayshah Xuan Chan | 8****1 | 17 |
valbarriere | v****e@h****m | 16 |
Martincccc | 3****c | 9 |
Ayshah Chan | a****n@A****l | 7 |
Felix Schmitz | 3****z | 4 |
Cyrille Médard de Chardon | c****c@g****m | 3 |
Kristof Van Tricht | k****t@v****e | 1 |
Joachim Nyborg | j****g@o****m | 1 |
Gonzalo Mier | g****4@g****m | 1 |
Committer domains:
Issue and Pull Request metadata
Last synced: 1 day ago
Total issues: 22
Total pull requests: 13
Average time to close issues: 3 months
Average time to close pull requests: 22 days
Total issue authors: 11
Total pull request authors: 6
Average comments per issue: 1.95
Average comments per pull request: 0.46
Merged pull request: 12
Bot issues: 0
Bot pull requests: 0
Past year issues: 2
Past year pull requests: 1
Past year average time to close issues: 3 months
Past year average time to close pull requests: about 1 month
Past year issue authors: 2
Past year pull request authors: 1
Past year average comments per issue: 2.0
Past year average comments per pull request: 0.0
Past year merged pull request: 1
Past year bot issues: 0
Past year bot pull requests: 0
Top Issue Authors
- Martincccc (8)
- sbgeophd (3)
- xchan011 (2)
- psarka (2)
- sumesh1 (1)
- adamjstewart (1)
- tonish (1)
- rdandrimont (1)
- maja601 (1)
- thomasstorm (1)
- glemoine62 (1)
Top Pull Request Authors
- Martincccc (7)
- valbarriere (2)
- Gonzalo-Mier (1)
- jnyborg (1)
- kvantricht (1)
- serialc (1)
Top Issue Labels
Top Pull Request Labels
Score: 7.590852123688581