Published May 30, 2025 | Version v3
Dataset Open

AgriPotential dataset

Contributors

Contact person:

Project member:

  • 1. Univ. de Toulouse
  • 2. University of Toulouse
  • 3. ROR icon Université de Toulouse

Description

This is the official page for AgriPotential, a publicly available benchmark dataset designed for assessing agricultural potentials using remote sensing data. It integrates 11  Sentinel-2 satellite images from 2019 across 10 spectral bands, covering agricultural regions in the Hérault Department, Southern France. The dataset includes pixel-wise labels representing agricultural potential levels (from Very Low to Very High) across three crop types: viticulture, market gardening, and field crops. Ground truth annotations are derived from the BD Sol - GDPA database and validated by domain experts. The dataset is stored in HDF5 format and supports a range of machine learning tasks, including ordinal classification, regression, segmentation, and spatio-temporal modeling.

This dataset facilitates scalable, data-driven solutions for land suitability analysis, agricultural planning, and sustainable resource management.

On this page you will find a PDF with supplmentary results for the paper.

A tutorial GitHub is also available: https://github.com/MohammadElSakka/agripotential-dataset 

Raw data that was used to make this dataset can be found here (there isn't much to do there apart from downloading it): https://zenodo.org/records/15551802

Files

dataset.zip

Files (28.4 GB)

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