--- license: cc-by-4.0 task_categories: - image-segmentation - image-classification language: - en tags: - semantic segmentation - remote sensing - sentinel - wildfire pretty_name: Wildfires - CEMS size_categories: - 1K gzip > split). To revert the process into files and directories follow these steps: ```console $ git clone https://huggingface.co/datasets/links-ads/wildfires-cems $ cd wildfires-ems # revert the multipart compression: merge first, then untar $ cat data/train/train.tar.* | tar -xzvf - -i $ cat data/test/test.tar.* | tar -xzvf - -i $ cat data/val/val.tar.* | tar -xzvf - -i ``` It is very likely that the extracted files will retain the internal directory structure, making the `train/val/test` directories useless. Adapt the output structure as you see fit, the original structure is shown below. ## Dataset Structure The main dataset used in the paper comprises the following inputs: | Suffix | Data Type | Description | Format | |---------|--------------------|-------------------------------------------------------------------------------------------|--------------------------| | S2L2A | Sentinel-2 Image | L2A data with 12 channels in reflectance/10k format | GeoTIFF (.tif) | | DEL | Delineation Map | Binary map indicating burned areas as uint8 values (0 or 1) | GeoTIFF (.tif) | | GRA | Grading Map | Grading information (if available) with uint8 values ranging from 0 to 4 | GeoTIFF (.tif) | | ESA_LC | Land Cover Map | ESA WorldCover 2020 land cover classes as uint8 values | GeoTIFF (.tif) | | CM | Cloud Cover Map | Cloud cover mask, uint8 values generated using CloudSen12 (0 or 1) | GeoTIFF (.tif) | Additionally, the dataset also contains two land cover variants, the ESRI Annual Land Cover (9 categories) and the static variant (10 categories), not used in this study. The dataset already provides a `train` / `val` / `test` split for convenience, however the inner structure of each group is the same. The folders are structured as follows: ``` train/val/test/ ├── EMSR230/ │ ├── AOI01/ │ │ ├── EMSR230_AOI01_01/ │ │ │ ├── EMSR230_AOI01_01_CM.png │ │ │ ├── EMSR230_AOI01_01_CM.tif │ │ │ ├── EMSR230_AOI01_01_DEL.png │ │ │ ├── EMSR230_AOI01_01_DEL.tif │ │ │ ├── EMSR230_AOI01_01_ESA_LC.png │ │ │ ├── EMSR230_AOI01_01_ESA_LC.tif │ │ │ ├── EMSR230_AOI01_01_GRA.png │ │ │ ├── EMSR230_AOI01_01_GRA.tif │ │ │ ├── EMSR230_AOI01_01_S2L2A.json -> metadata information │ │ │ ├── EMSR230_AOI01_01_S2L2A.png -> RGB visualization │ │ │ └── EMSR230_AOI01_01_S2L2A.tif │ │ │ └── ... │ │ ├── EMSR230_AOI01_02/ │ │ │ └── ... │ │ ├── ... │ ├── AOI02/ │ │ └── ... │ ├── ... ├── EMSR231/ │ ├── ... ├── ... ``` ### Source Data - Activations are directly derived from Copernicus EMS (CEMS): [https://emergency.copernicus.eu/mapping/list-of-activations-rapid](https://emergency.copernicus.eu/mapping/list-of-activations-rapid) - Sentinel-2 and LC images are downloaded from Microsoft Planetary Computer, using the AoI provided by CEMS. - DEL and GRA maps represent the rasterized version of the delineation/grading products provided by the Copernicus service. ### Licensing Information CC-BY-4.0 [https://creativecommons.org/licenses/by/4.0/](https://creativecommons.org/licenses/by/4.0/) ### Citation Information ```bibtex @inproceedings{arnaudo2023burned, title={Robust Burned Area Delineation through Multitask Learning}, author={Arnaudo, Edoardo and Barco, Luca and Merlo, Matteo and Rossi, Claudio}, booktitle={Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases}, year={2023} } ``` ### Contributions - Luca Barco (luca.barco@linksfoundation.com) - Edoardo Arnaudo (edoardo.arnaudo@polito.it | linksfoundation.com) ### Acknowledgements This dataset was created in the context of the OVERWATCH project, funded in the Horizon Europe Programme under G.A. n.101082320, with the support of the EU Agency for the Space Programme (EUSPA). More information: [https://overwatchproject.eu/](https://overwatchproject.eu/)