Comparative Analysis of Machine Learning Models for Sentinel-2 based Classification of the Bornean Heath Forest

Authors

  • Dwi Ahmad Dzulhijjah Magister of Informatics, Universitas AMIKOM Yogyakarta, Indonesia | Department of Informatics and Computer Engineering, Politeknik Elektronika Negeri Surabaya, Indonesia
  • Kusrini Informatics Postgraduate Program, Universitas AMIKOM Yogyakarta, Indonesia | Fundacion para la Investigacion y Desarrollo Tecnologico de la Sociedad del Conocimiento, Murcia, Spain
  • Rodrigo Martinez-Bejar Informatics, Faculty of Computer Science, University of Murcia, Murcia, Spain | Fundacion para la Investigacion y Desarrollo Tecnologico de la Sociedad del Conocimiento, Murcia, Spain
Volume: 15 | Issue: 2 | Pages: 21937-21943 | April 2025 | https://doi.org/10.48084/etasr.10173

Abstract

Bornean heath forests, known as hutan kerangas, are fragile ecosystems that face significant anthropogenic threats. This study integrates Sentinel-2 satellite imagery with Machine Learning (ML) models to accurately classify these forests and assess their current spatial distribution. The Random Forest (RF) and Gradient Tree Boost (GTB) models achieved the highest classification performance, with overall accuracy scores of 96.66% and 96.69%, respectively, and Kappa coefficients of 0.945. These metrics were obtained using a test dataset with an 80:20 train-test split and validated through a 5-fold cross-validation process, ensuring the robustness of the models. Compared to previous studies employing unsupervised classification with Landsat-9 data, this approach demonstrates improved classification reliability and spatial accuracy. The findings highlight the substantial potential of combining remote sensing technologies with advanced ML techniques for large-scale ecosystem monitoring. This approach provides valuable insights for conservation planning and sustainable management of Bornean heath forests, addressing the growing environmental pressures that threaten their integrity.

Keywords:

heath forest classification, Sentinel-2 imagery, machine learning models, remote sensing, climate

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How to Cite

[1]
Dzulhijjah, D.A., Kusrini, . and Martinez-Bejar, R. 2025. Comparative Analysis of Machine Learning Models for Sentinel-2 based Classification of the Bornean Heath Forest. Engineering, Technology & Applied Science Research. 15, 2 (Apr. 2025), 21937–21943. DOI:https://doi.org/10.48084/etasr.10173.

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