# Mapping Robusta coffee (Coffea canephora) cropping systems in Uganda: A two-step pixel and sub-pixel based approach with Sentinel-2 data

**Authors:** Getachew Kebede, Bester Tawona Mudereri, Onisimo Mutanga, Tobias Landmann, John Odindi, Natacha Motisi, Fabrice Pinard, Henri E. Z. Tonnang, Elfatih M. Abdel-Rahman, Tzen-Yuh Chiang, Tzen-Yuh Chiang, Tzen-Yuh Chiang, Tzen-Yuh Chiang

PMC · DOI: 10.1371/journal.pone.0338803 · PLOS One · 2026-01-05

## TL;DR

This study maps Robusta coffee farming systems in Uganda using satellite data and advanced classification techniques to improve agricultural management.

## Contribution

A novel two-step pixel and sub-pixel approach using Sentinel-2 data and MESMA for detailed Robusta coffee cropping system mapping.

## Key findings

- The study achieved 93.5% accuracy in mapping land use and land cover classes.
- Sub-pixel analysis correctly identified Robusta coffee systems with over 88.5% accuracy.
- The method successfully disentangled different coffee cropping systems in heterogeneous landscapes.

## Abstract

Coffee is a highly valued commodity and a widely consumed beverage, playing an important role in global trade. However, coffee farming landscapes are increasing transitioning into smaller-scale agricultural setups. This transformation highlights the critical need for accurate classification and mapping of coffee cropping systems (CS), especially in countries like Uganda, where dense vegetation and complex terrain present substantial challenges to traditional land survey methods. Moreover, understanding the spatial distribution of Robusta coffee (Coffea canephora) CS is essential for developing site-specific management strategies, guiding extension services, and informing evidence-based policy decisions. To address this gap, the present study aimed to enhance the discrimination and mapping capabilities of Robusta coffee CS at a sub-pixel scale using a two-step classification approach and multi-date Sentinel-2 (S2) data. In the first step, the random forest (RF) classification algorithm was used to map the major land use and land cover (LULC) classes in Google Earth Engine platform. Then, the Robusta coffee cropland class was masked, and a sub-pixel multiple endmember spectral mixture analysis (MESMA) was employed to discriminate Robusta coffee CS using three endmembers (EMs) obtained from in-situ hyperspectral data collected in 2023 from: (i) Robusta coffee with agroforestry, (ii) Robusta coffee with banana, and (iii) Robusta coffee under full sun. The result showed 93.5% overall accuracy for the major LULC and 89.9% for all Robusta coffee CS classes, disentangled as follows: 91.3% accuracy for Robusta coffee with agroforestry, 88.5% for Robusta coffee with banana, and 91.2% for Robusta coffee under full sun. Moreover, the MESMA sub-pixel algorithm demonstrates credible performance in discriminating the Robusta coffee CS within each S2 pixel at the heterogeneous landscape in the study area. The findings of this study can inform site-specific interventions (e.g., pest management, fertilizer application, etc.) tailored to the type of CS.

## Linked entities

- **Species:** Coffea canephora (taxon 49390)

## Full-text entities

- **Species:** Musa acuminata (banana, species) [taxon 4641], Coffea canephora (robusta coffee, species) [taxon 49390]

## Full text

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## Figures

10 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12768349/full.md

## References

70 references — full list in the complete paper: https://tomesphere.com/paper/PMC12768349/full.md

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Source: https://tomesphere.com/paper/PMC12768349