Abstract

The U-net is nowadays among the most popular deep learning algorithms for land use/land cover (LULC) mapping; nevertheless, it has rarely been used with synthetic aperture radar (SAR) and multispectral (MS) imagery. On the other hand, the discrimination between plantations and forests in LULC maps has been emphasized, especially for tropical areas, due to their differences in biodiversity and ecosystem services provision. In this study, we trained a U-net using different imagery inputs from Sentinel-1 and Sentinel-2 satellites, MS, SAR and a combination of both (MS + SAR); while a random forests algorithm (RF) with the MS + SAR input was also trained to evaluate the difference in algorithm selection. The classification system included ten classes, including old-growth and secondary forests, as well as old-growth and young plantations. The most accurate results were obtained with the MS + SAR U-net, where the highest overall accuracy (0.76) and average F1-score (0.58) were achieved. Although MS + SAR and MS U-nets gave similar results for almost all of the classes, for old-growth plantations and secondary forest, the addition of the SAR band caused an F1-score increment of 0.08–0.11 (0.62 vs. 0.54 and 0.45 vs. 0.34, respectively). Consecutively, in comparison with the MS + SAR RF, the MS + SAR U-net obtained higher F1-scores for almost all the classes. Our results show that using the U-net with a combined input of SAR and MS images enabled a higher F1-score and accuracy for a detailed LULC map, in comparison with other evaluated methods.

Highlights

  • Land use/land cover (LULC) classification has long been a topic of interest in Earth observation research [1,2,3]

  • It is essential to evaluate the role of different imagery inputs and algorithms in land use/land cover (LULC) mapping with special focus on discriminating among forested classes

  • In this study we found that we trained the U-net with a small dataset, it outperformed the random forests algorithm

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Summary

Introduction

Land use/land cover (LULC) classification has long been a topic of interest in Earth observation research [1,2,3]. Earth surface by classifying the continuous variation of its attributes in discrete classes and contribute in the establishment of baselines in LULC change studies, which are essential for the management and monitoring of the land surface [4,5,6,7]. In tropical regions, several studies have emphasized the importance of discriminating between old-growth forests and plantations, as well as secondary forests, due to their differences in environmental management and biodiversity conservation [8,9,10,11,12] These three classes may have similar canopy cover, secondary forests and plantations usually hold less above ground biomass, host less biodiversity and provide different ecosystem

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