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  7. Comparative Analysis of Supervised Machine Learning Algorithms for Forest Habitat Mapping in Cyprus
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Comparative Analysis of Supervised Machine Learning Algorithms for Forest Habitat Mapping in Cyprus

Journal
Sustainability
Date Issued
June 30, 2025
Author(s)
Prodromou, Maria  
Gitas, Ioannis  
Mettas, Christodoulos  
Tzouvaras, Marios  
Danezis, Chris  
Hadjimitsis, Diofantos G.  
DOI
10.3390/su17136021
Abstract
Mapping dominant forest habitats is essential for guiding reforestation practices, especially in areas affected by fires. This study focuses on identifying dominant forest habitats in selected forested areas in Cyprus using supervised, pixel-based classification algorithms to support the planning of post-fire reforestation actions. For this study, three classifiers were provided by the Google Earth Engine (GEE) platform. Specifically, the Random Forest (RF), Support Vector Machine (SVM), and Classification and Regression Trees (CART) were implemented utilizing Sentinel-1 and Sentinel-2 data as well as topographic features and the tree density. Eight dominant forest habitats were mapped, including the Mediterranean pine forests with endemic Mesogean pines, Sarcopoterium spinosum phrygana, Thermo-Mediterranean and pre-desert scrub, Olea and Ceratonia forests, scrub and low forest vegetation with Quercus alnifolia, endemic forests with Juniperus, Cedrus brevifolia forests and Mediterranean pine forests with endemic Mesogean pines. The results revealed that RF and SVM outperformed CART. While SVM achieved the highest overall accuracy (OA) of 84.67%, it exhibited sensitivity to hyperparameter adjustments. In contrast, RF demonstrated greater stability and generalization across habitat types, attaining a reliable OA of 82.24%, making it the preferred classifier for this study.
Funding(s)
EXCELSIOR: ERATOSTHENES Centre of Excellence for Earth Surveillance and Space-Based Monitoring of the Environment  
Subjects

forest habitat mappin...

Google Earth Engine

Sentinel

remote sensing

supervised classifica...

Mediterranean forests...

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sustainability-17-06021-v2.pdf

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