Deep Learning Approaches for Wildland Fires Using Satellite Remote Sensing Data: Detection, Mapping, and Prediction

Author:

Ghali Rafik1ORCID,Akhloufi Moulay A.1ORCID

Affiliation:

1. Perception, Robotics and Intelligent Machines (PRIME), Department of Computer Science, Université de Moncton, Moncton, NB E1A 3E9, Canada

Abstract

Wildland fires are one of the most dangerous natural risks, causing significant economic damage and loss of lives worldwide. Every year, millions of hectares are lost, and experts warn that the frequency and severity of wildfires will increase in the coming years due to climate change. To mitigate these hazards, numerous deep learning models were developed to detect and map wildland fires, estimate their severity, and predict their spread. In this paper, we provide a comprehensive review of recent deep learning techniques for detecting, mapping, and predicting wildland fires using satellite remote sensing data. We begin by introducing remote sensing satellite systems and their use in wildfire monitoring. Next, we review the deep learning methods employed for these tasks, including fire detection and mapping, severity estimation, and spread prediction. We further present the popular datasets used in these studies. Finally, we address the challenges faced by these models to accurately predict wildfire behaviors, and suggest future directions for developing reliable and robust wildland fire models.

Funder

Natural Sciences and Engineering Research Council

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Safety Research,Environmental Science (miscellaneous),Safety, Risk, Reliability and Quality,Building and Construction,Forestry

Reference189 articles.

1. Natural Resources Canada (2023, March 05). National Wildland Fire Situation Report, Available online: https://cwfis.cfs.nrcan.gc.ca/report.

2. Ghali, R., Akhloufi, M.A., Jmal, M., Souidene Mseddi, W., and Attia, R. (2021). Wildfire Segmentation Using Deep Vision Transformers. Remote Sens., 13.

3. Ghali, R., Akhloufi, M.A., and Mseddi, W.S. (2022). Deep Learning and Transformer Approaches for UAV-Based Wildfire Detection and Segmentation. Sensors, 22.

4. Ghali, R., Jmal, M., Souidene Mseddi, W., and Attia, R. (2018, January 20–22). Recent Advances in Fire Detection and Monitoring Systems: A Review. Proceedings of the 18th International Conference on Sciences of Electronics, Technologies of Information and Telecommunications (SETIT’18), Hammamet, Tunisia.

5. The collection 6 MODIS active fire detection algorithm and fire products;Giglio;Remote Sens. Environ.,2016

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