Abstract

Deforestation is one of the major threats to natural ecosystems. This process has a substantial contribution to climate change and biodiversity reduction. Therefore, the monitoring and early detection of deforestation is an essential process for preservation. Techniques based on satellite images are among the most attractive options for this application. However, many approaches involve some human intervention or are dependent on a manually selected threshold to identify regions that suffer deforestation. Motivated by this scenario, the present work evaluates Deep Learning-based strategies for automatic deforestation detection, namely, Early Fusion (EF), Siamese Network (SN), and Convolutional Support Vector Machine (CSVM) as well as Support Vector Machine (SVM), used as the baseline. The target areas are two regions with different deforestation patterns: the Amazon and Cerrado biomes in Brazil. The experiments used two co-registered Landsat 8 images acquired at different dates. The strategies based on Deep Learning achieved the best performance in our analysis in comparison with the baseline, with SN and EF superior to CSVM and SVM. In the same way, a reduction of the salt-and-pepper effect in the generated probabilistic change maps was noticed as the number of training samples increased. Finally, the work assesses how the methods can reduce the time invested in the visual inspection of deforested areas.

Highlights

  • Deforestation is one of the largest sources of anthropogenic CO2 emissions

  • We report the average of Overall Accuracy (OA) and F1-score computed over ten runs, each run with a different choice of training samples for the class “no deforestation”

  • With a single training tile, the Convolutional Support Vector Machine (SVM) (CSVM) performance was similar for two and three layers; with two and four tiles for training, the best performance was obtained with two layers; using three tiles for training, the performance decreased as more layers were added

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Summary

Introduction

Deforestation is one of the largest sources of anthropogenic CO2 emissions. It is a wide-reaching problem, including the reduction of carbon storage, greenhouse gas emissions, and other environmental issues such as biodiversity losses [1]. One of the highest deforestation rates occurs in South America [2], where the most significant statistics of tree losses are concentrated in Brazil [3,4] This country comprises most of the Amazon rainforest, with 60% of its total territory [5]. Amazon and Cerrado biomes cover the most significant portion of the Brazilian territory, with an area of about 49% and 24%, respectively, comprising together an area of around 6.2 million square kilometers of the Brazilian territory In both biomes, the deforested areas are predominantly converted to pasture [6,7], in addition to a strong expansion of soy in the Cerrado biome [8]. The conservation of Amazon and Cerrado biomes is essential for the future of our planet

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