Forest Fire Surveillance Through Deep Learning Segmentation and Drone Technology

Mimoun Yandouzi 1, 2
Sokaina Boukricha 1, 2
Mounir Grari 2, 3
Mohammed Berrahal 2, 4
Omar Moussaoui 2, 3
Mostafa Azizi 2, 3
Kamal Ghoumid 1, 2
1
 
LSI, ENSAO, Mohammed First University, Oujda, Morocco
2
 
LARI, FSO, Mohammed First University, Oujda, Morocco
3
 
MATSI, ESTO, Mohammed First University, Oujda, Morocco
Publication typeBook Chapter
Publication date2024-08-31
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ISSN3004958X, 30049598
Abstract
Forests are essential to our planet's well-being, playing a vital role in climate regulation, biodiversity preservation, and soil protection, thus serving as a cornerstone of our global ecosystem. The threat posed by forest fires highlights the critical need for early detection systems, which are indispensable tools in safeguarding ecosystems, livelihoods, and communities from devastating destruction. In combating forest fires, a range of techniques is employed for efficient early detection. Notably, the combination of drones with artificial intelligence, particularly deep learning, holds significant promise in this regard. Image segmentation emerges as a versatile method, involving the partitioning of images into multiple segments to simplify representation, and it leverages deep learning for fire detection, continuous monitoring of high-risk areas, and precise damage assessment. This study provides a comprehensive examination of recent advancements in semantic segmentation based on deep learning, with a specific focus on Mask R-CNN (Mask Region Convolutional Neural Network) and YOLO (You Only Look Once) v5, v7, and v8 variants. The emphasis is placed on their relevance in forest fire monitoring, utilizing drones equipped with high-resolution cameras.
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Lecture Notes in Networks and Systems
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Springer Nature
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Yandouzi M. et al. Forest Fire Surveillance Through Deep Learning Segmentation and Drone Technology // Information Systems Engineering and Management. 2024. p. 3-12.
GOST all authors (up to 50) Copy
Yandouzi M., Boukricha S., Grari M., Berrahal M., Moussaoui O., Azizi M., Ghoumid K., Kerkour El Miad A. Forest Fire Surveillance Through Deep Learning Segmentation and Drone Technology // Information Systems Engineering and Management. 2024. p. 3-12.
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RIS Copy
TY - GENERIC
DO - 10.1007/978-3-031-66850-0_1
UR - https://link.springer.com/10.1007/978-3-031-66850-0_1
TI - Forest Fire Surveillance Through Deep Learning Segmentation and Drone Technology
T2 - Information Systems Engineering and Management
AU - Yandouzi, Mimoun
AU - Boukricha, Sokaina
AU - Grari, Mounir
AU - Berrahal, Mohammed
AU - Moussaoui, Omar
AU - Azizi, Mostafa
AU - Ghoumid, Kamal
AU - Kerkour El Miad, Aissa
PY - 2024
DA - 2024/08/31
PB - Springer Nature
SP - 3-12
SN - 3004-958X
SN - 3004-9598
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@incollection{2024_Yandouzi,
author = {Mimoun Yandouzi and Sokaina Boukricha and Mounir Grari and Mohammed Berrahal and Omar Moussaoui and Mostafa Azizi and Kamal Ghoumid and Aissa Kerkour El Miad},
title = {Forest Fire Surveillance Through Deep Learning Segmentation and Drone Technology},
publisher = {Springer Nature},
year = {2024},
pages = {3--12},
month = {aug}
}