Estimating fractional land cover using sentinel-2 and multi-source data with traditional machine learning and deep learning approaches
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Sierra Menéndez, Sergio
; Ramo Sánchez, Rubén; Padilla, Marc; Quirós, Laura; Cobo García, Adolfo
Fecha
2025-10-01Derechos
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Publicado en
Remote Sensing, 2025, 17(19), 3364
Editorial
MDPI
Palabras clave
Land cover fraction mapping
Sentinel-2
Machine learning
Deep-learning
Land cover
Resumen/Abstract
Land cover mapping is essential for territorial management due to its links with ecological, hydrological, climatic, and socioeconomic processes. Traditional methods use discrete classes per pixel, but this study proposes estimating cover fractions with Sentinel-2 imagery (20 m) and AI. We employed the French Land cover from Aerospace ImageRy (FLAIR) dataset (810 km2 in France, 19 classes), with labels co-registered with Sentinel-2 to derive precise fractional proportions per pixel. From these references, we generated training sets combining spectral bands, derived indices, and auxiliary data (climatic and tempo-ral variables). Various machine learning models-including XGBoost three deep neural network (DNN) architectures with different depths, and convolutional neural networks (CNNs) were trained and evaluated to identify the optimal configuration for fractional cover estimation. Model validation on the test set employed RMSE, MAE, and R2 metrics at both pixel level (20 m Sentinel-2) and scene level (100 m FLAIR). The training set integrating spectral bands, vegetation indices, and auxiliary variables yielded the best MAE and RMSE results. Among all models, DNN2 achieved the highest performance, with a pixel-level RMSE of 13.83 and MAE of 5.42, and a scene-level RMSE of 4.94 and MAE of 2.36. This fractional approach paves the way for advanced remote sensing applications, including con-tinuous cover-change monitoring, carbon footprint estimation, and sustainability-oriented territorial planning.
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