Abstract

Abstract. Synthetic Aperture Radar (SAR) images are a valuable tool for wetlands monitoring since they are able to detect water below the vegetation. Furthermore, SAR images can be acquired regardless of the weather conditions. The monitoring and study of wetlands have become increasingly important due to the social and ecological benefits they provide and the constant pressures they are subject to. The Sentinel-1 mission from the European Space Agency enables the possibility of having free access to multitemporal SAR data. This study aims to investigate the use of multitemporal Sentinel-1 data for wetlands land-cover classification. To perform this assessment, we acquired 76 Sentinel-1 images from a portion of the Lower Delta of the Paraná River, and considering different seasons, texture measurements, and polarization, 30 datasets were created. For each dataset, a Random Forest classifier was trained. Our experiments show that datasets that included the winter dates achieved kappa index values (κ) higher than 0.8. Including textures measurements showed improvements in the classifications: for the summer datasets, the κ increased more than 14%, whereas, for Winter datasets in the VH and Dual polarization, the improvements were lower than 4%. Our results suggest that for the analyzed land-cover classes, winter is the most informative season. Moreover, for Summer datasets, the textures measurements provide complementary information.

Highlights

  • Earth satellite images can provide information about great extension and difficult access natural areas

  • One of the objectives of this study is to understand which Sentinel1 dataset leads to a better classification in densely vegetated areas: is the dataset associated with a specific season, or is it the Complete dataset?

  • This research aimed to identify the potential of Sentinel-1 data for creating a thematic land-cover map in the Lower Delta of the Parana River

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Summary

Introduction

Earth satellite images can provide information about great extension and difficult access natural areas. They are an essential tool for mapping wetlands. Using satellite images is less expensive than fieldwork-based mapping, and they can provide information in different temporal and spatial scales (Brisco et al, 2011). The Synthetic Aperture Radars (SAR) signal can penetrate through the vegetation and provide information about flood conditions, underneath vegetation biomass, and soil characteristics (White et al, 2015), depending on the sensor and target characteristics. Other remarkable points of SAR images are that they provide information about the geometric and dielectric characteristics of the observed target and that they can be acquired regardless of the presence of clouds or lighting conditions

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