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Fire and Smoke Detection Using Fine-Tuned YOLOv8 and YOLOv7 Deep Models

Mohamed Chetoui, Moulay A. Akhloufi

2024Fire31 citationsDOIOpen Access PDF

Abstract

Viewed as a significant natural disaster, wildfires present a serious threat to human communities, wildlife, and forest ecosystems. The frequency of wildfire occurrences has increased recently, with the impacts of global warming and human interaction with the environment playing pivotal roles. Addressing this challenge necessitates the ability of firefighters to promptly identify fires based on early signs of smoke, allowing them to intervene and prevent further spread. In this work, we adapted and optimized recent deep learning object detection, namely YOLOv8 and YOLOv7 models, for the detection of smoke and fire. Our approach involved utilizing a dataset comprising over 11,000 images for smoke and fires. The YOLOv8 models successfully identified fire and smoke, achieving a mAP:50 of 92.6%, a precision score of 83.7%, and a recall of 95.2%. The results were compared with a YOLOv6 with large model, Faster-RCNN, and DEtection TRansformer. The obtained scores confirm the potential of the proposed models for wide application and promotion in the fire safety industry.

Topics & Concepts

SmokeEnvironmental scienceFire detectionComputer scienceEnvironmental resource managementEngineeringMeteorologyGeographyArchitectural engineeringFire Detection and Safety SystemsVideo Surveillance and Tracking MethodsImage Enhancement Techniques