Scientific Data (May 2024)

A labelled dataset to classify direct deforestation drivers from Earth Observation imagery in Cameroon

  • Amandine Debus,
  • Emilie Beauchamp,
  • James Acworth,
  • Achille Ewolo,
  • Justin Kamga,
  • Astrid Verhegghen,
  • Christiane Zébazé,
  • Emily R. Lines

DOI
https://doi.org/10.1038/s41597-024-03384-z
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 8

Abstract

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Abstract Understanding direct deforestation drivers at a fine spatial and temporal scale is needed to design appropriate measures for forest management and monitoring. To achieve this, reference datasets with which to design Artificial Intelligence (AI) approaches to classify direct deforestation drivers within areas experiencing forest loss in a detailed, comprehensive and locally-adapted way are needed. This is the case for Cameroon, in the Congo Basin, which has known increasing deforestation rates in recent years. Here, we created an Earth Observation dataset with associated labels to classify detailed direct deforestation drivers in Cameroon, which includes satellite imagery (Landsat and PlanetScope) and auxiliary data on infrastructure and biophysical properties. The dataset provides the following fifteen labels: oil palm, timber, fruit, rubber and other-large scale plantations; grassland/shrubland; small-scale oil palm or maize plantations and other small-scale agriculture; mining; selective logging; infrastructure; wildfires; hunting; and other.