Enhanced agricultural land use/land cover classification in the Nile Delta using Sentinel-1 and Sentinel-2 data and machine learning
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Date
2025-08-21
Date Issued
2025-11-01
ISI Journal
Impact factor: 12.2 (Year: 2025)
Citation
Mona Maze, Samar Attaher, Mohamed O. Taqi, Rania Elsawy, Manal M. H. Gad El-Moula, Fadl A. Hashem, Ahmed S. Moussa. (1/11/2025). Enhanced agricultural land use/land cover classification in the Nile Delta using Sentinel-1 and Sentinel-2 data and machine learning. ISPRS Journal of Photogrammetry and Remote Sensing, 229.
Abstract
Accurate and timely Land Use and Land Cover (LULC) classification is crucial for effective agricultural planning
and decision-making, particularly in regions like the Nile Delta, Egypt, where LULC is rapidly changing. This
study addresses the challenge of classifying small, fragmented agricultural fields and road networks by
leveraging the synergistic potential of Sentinel-1 and Sentinel-2 data, combined with Machine Learning (ML) and
Deep Learning (DL) techniques. Unlike previous studies that often rely on Sentinel-2 or image-based DL, this
research introduces a novel approach: a pixel-based ML classification using both Sentinel-1 and Sentinel-2 data.
This strategy allowed to effectively capture the spectral and textural information crucial for distinguishing small
features, which are often missed by traditional methods. Using distinct temporal datasets and validated ground
truth annotations, we trained and tested several ML and DL models, including XGB, Support Vector Classifier, KNearest
Neighbor, Decision Tree, Random Forest, and LSTM. XGB achieved the highest overall accuracy (94.4
%), whereas Random Forest produced the most accurate map with independent data (91.4 % Overall Accuracy).
Integrating Sentinel-1 with Sentinel-2 data improved classification accuracy by 1–7 % compared to using
Sentinel-2 alone. Notably, the pixel-based ML approach yielded reliable predictions for small road areas and
agricultural fields, which are often challenging to map accurately. This research demonstrates the effectiveness of
integrating multi-sensor data with advanced ML/DL for improved LULC classification, particularly for small
feature mapping, thus providing critical information for enhanced agricultural planning and decision-making in
the Nile Delta.
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Author(s) ORCID(s)
Attaher, Samar https://orcid.org/0000-0001-8488-180X


