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Robust Forest Fire Detection Method for Surveillance Systems Based on You Only Look Once Version 8 and Transfer Learning Approachesopen access

Authors
Yunusov, NodirIslam, Bappy M. D. SifulAbdusalomov, AkmalbekKim, Wooseong
Issue Date
May-2024
Publisher
MDPI
Keywords
forest fire; fire detection; YOLOv8; deep learning; TranSDet; wildfire incidents; brushfire spread
Citation
PROCESSES, v.12, no.5
Journal Title
PROCESSES
Volume
12
Number
5
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/91675
DOI
10.3390/pr12051039
ISSN
2227-9717
2227-9717
Abstract
Forest fires have emerged as a significant global concern, exacerbated by both global warming and the expanding human population. Several adverse outcomes can result from this, including climatic shifts and greenhouse effects. The ramifications of fire incidents extend widely, impacting human communities, financial resources, the natural environment, and global warming. Therefore, timely fire detection is essential for quick and effective response and not to endanger forest resources, animal life, and the human economy. This study introduces a forest fire detection approach utilizing transfer learning with the YOLOv8 (You Only Look Once version 8) pretraining model and the TranSDet model, which integrates an improved deep learning algorithm. Transfer Learning based on pre-trained YoloV8 enhances a fast and accurate object detection aggregate with the TranSDet structure to detect small fires. Furthermore, to train the model, we collected 5200 images and performed augmentation techniques for data, such as rotation, scaling, and changing due and saturation. Small fires can be detected from a distance by our suggested model both during the day and at night. Objects with similarities can lead to false predictions. However, the dataset augmentation technique reduces the feasibility. The experimental results prove that our proposed model can successfully achieve 98% accuracy to minimize catastrophic incidents. In recent years, the advancement of deep learning techniques has enhanced safety and secure environments. Lastly, we conducted a comparative analysis of our method's performance based on widely used evaluation metrics to validate the achieved results.
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College of IT Convergence (컴퓨터공학부(컴퓨터공학전공))
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