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An Improved Wildfire Smoke Detection Based on YOLOv8 and UAV Imagesopen access

Authors
Saydirasulovich, Saydirasulov NorkobilMukhiddinov, MukhriddinDjuraev, OybekAbdusalomov, AkmalbekCho, Young-Im
Issue Date
Oct-2023
Publisher
MDPI
Keywords
wildfire smoke detection; forest fire; UAV images; BiFormer; ghost shuffle convolution; remote sensing; deep learning; YOLOv8
Citation
SENSORS, v.23, no.20
Journal Title
SENSORS
Volume
23
Number
20
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/89567
DOI
10.3390/s23208374
ISSN
1424-8220
1424-3210
Abstract
Forest fires rank among the costliest and deadliest natural disasters globally. Identifying the smoke generated by forest fires is pivotal in facilitating the prompt suppression of developing fires. Nevertheless, succeeding techniques for detecting forest fire smoke encounter persistent issues, including a slow identification rate, suboptimal accuracy in detection, and challenges in distinguishing smoke originating from small sources. This study presents an enhanced YOLOv8 model customized to the context of unmanned aerial vehicle (UAV) images to address the challenges above and attain heightened precision in detection accuracy. Firstly, the research incorporates Wise-IoU (WIoU) v3 as a regression loss for bounding boxes, supplemented by a reasonable gradient allocation strategy that prioritizes samples of common quality. This strategic approach enhances the model's capacity for precise localization. Secondly, the conventional convolutional process within the intermediate neck layer is substituted with the Ghost Shuffle Convolution mechanism. This strategic substitution reduces model parameters and expedites the convergence rate. Thirdly, recognizing the challenge of inadequately capturing salient features of forest fire smoke within intricate wooded settings, this study introduces the BiFormer attention mechanism. This mechanism strategically directs the model's attention towards the feature intricacies of forest fire smoke, simultaneously suppressing the influence of irrelevant, non-target background information. The obtained experimental findings highlight the enhanced YOLOv8 model's effectiveness in smoke detection, proving an average precision (AP) of 79.4%, signifying a notable 3.3% enhancement over the baseline. The model's performance extends to average precision small (APS) and average precision large (APL), registering robust values of 71.3% and 92.6%, respectively.
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College of IT Convergence (컴퓨터공학부(컴퓨터공학전공))
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