IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

FLOGA: A Machine-Learning-Ready Dataset, a Benchmark, and a Novel Deep Learning Model for Burnt Area Mapping With Sentinel-2

  • Maria Sdraka,
  • Alkinoos Dimakos,
  • Alexandros Malounis,
  • Zisoula Ntasiou,
  • Konstantinos Karantzalos,
  • Dimitrios Michail,
  • Ioannis Papoutsis

DOI
https://doi.org/10.1109/JSTARS.2024.3381737
Journal volume & issue
Vol. 17
pp. 7801 – 7824

Abstract

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Over the last decade, there has been an increasing frequency and intensity of wildfires across the globe, posing significant threats to human and animal lives, ecosystems, and socioeconomic stability. Therefore, urgent action is required to mitigate their devastating impact and safeguard earth's natural resources. Robust machine learning methods combined with the abundance of high-resolution satellite imagery can provide accurate and timely mappings of the affected area in order to assess the scale of the event, identify the impacted assets, and prioritize and allocate resources effectively for the proper restoration of the damaged region. In this work, we create and introduce a machine-learning-ready dataset we name FLOGA (Forest wiLdfire Observations for the Greek Area). This dataset is unique as it comprises satellite imagery acquired before and after a wildfire event with variable spatial and spectral resolution and contains a large number of events, where the corresponding burnt area ground truth has been annotated by domain experts. FLOGA covers the wider region of Greece, which is characterized by a Mediterranean landscape and climatic conditions. We use FLOGA to provide a thorough comparison of specialized spectral indices as well as multiple machine learning and deep learning algorithms for the automatic extraction of burnt areas, approached as a change detection task. Finally, we propose a novel deep learning model, namely BAM-CD. Our benchmark results demonstrate the efficacy of the proposed technique in the automatic extraction of burnt areas, outperforming all other methods in terms of accuracy and robustness.

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