Published March 26, 2024 | Version v20240319
Dataset Open

Landsat-based Spectral Indices for pan-EU 2000-2022 - Annual predictor P75 (2005): Reflectances bands, NDVI and NDWI

Description

Data information

This dataset provides the P75 (percentile 75) values of corresponding predictors for the year 2005. The P25 values are calculated from the bimonthly values of six corresponding predictors throughout the year. The predictors in this subset include seven reflectance bands: red, green, blue, NIR, SWIR1, SWIR2, and thermal; as well as two spectral indices: NDVI and NDWI.

As a part of a Data Cube

This data represents a subset of the Time-series of Landsat-based Spectral Indices (EU, 30m) data cube. For a comprehensive overview and full dataset information, please visit the landing page of this data cube using the provided link.

  • To cite this dataset, refer to the DOI available on the landing page.
  • To access other data layers in the data cube, use the navigation catalog on the landing page as well.

Support

If you discover a bug, artifact, or inconsistency, or if you have a question, please raise a Github Issue!

Files

00_preview.png

Files (43.4 GB)

Name Size Download all
md5:5b861c7d64882ba89bd841f6c8956b80
260.8 kB Preview Download
md5:33563e8445c5b28083c8661df80a46c4
3.6 GB Preview Download
md5:7db8a51d9d0c060e5dd712699071c27a
4.2 GB Preview Download
md5:01832f05f42297bd6c5b84b01c39343f
5.9 GB Preview Download
md5:9d82036bfd636ac91070bbaadf7942e9
6.2 GB Preview Download
md5:ee4dc82cffc4d4a31ff5434fb766b244
6.2 GB Preview Download
md5:c50de124ff798234c5fbb7789b7e23db
4.7 GB Preview Download
md5:d742fa2f80b49534c28778adb727f285
5.9 GB Preview Download
md5:c5fe37c4597a9f0e241f0cda610c3344
5.3 GB Preview Download
md5:00c90a3df7eabda0f9f3423e477fe16a
1.4 GB Preview Download

Additional details

Related works

Continues
Dataset: https://zenodo.org/records/10883976 (URL)
Is continued by
Dataset: https://zenodo.org/records/10883978 (URL)
Is part of
Dataset: 10.5281/zenodo.10776891 (DOI)

Funding

AI4SoilHealth – AI4SoilHealth: Accelerating collection and use of soil health information using AI technology to support the Soil Deal for Europe and EU Soil Observatory 101086179
European Commission