An AI-based Image Recognition System for Early Detection of Forest and Field Fires

Said Labed, Hamza Touati̇, Amani Heri̇da, Sarra Kerbab, Amira Sai̇ri̇
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Abstract

Forest and field fires have severe global implications, causing significant environmental and economic harm. Traditional methods of fire detection often rely on human personnel, which can pose safety risks and reduce their efficiency in large-scale monitoring. To address these challenges and minimize losses, there is an urgent need for real-time fire detection technology. In this research, we propose the utilization of artificial intelligence techniques, specifically Deep Learning with Convolutional Neural Networks (CNN), to tackle this issue. Our proposed system analyzes real-time images captured by IP cameras and stored on a cloud server. Its primary objective is to detect signs of fires and promptly notify users through a mobile application, ensuring timely awareness. To train our model, we meticulously assembled a dataset by merging three existing datasets comprising both fire and non-fire images. Additionally, we incorporated images that could potentially be misinterpreted as fire, such as red trees, individuals wearing red clothing, and red flags. Furthermore, we supplemented the dataset with images of unaffected areas obtained from online sources. The final dataset consisted of 1,588 fire images and 909 non-fire images. During evaluations, our model achieved an accuracy of 93.07%. This enables effective detection, thus rapid intervention and damage reduction. It is a proactive and preventive solution to combat these devastating fires.
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基于人工智能的森林火灾和田间火灾早期检测图像识别系统
森林和野外火灾具有严重的全球影响,造成重大的环境和经济危害。传统的火灾探测方法往往依赖于人工,这会带来安全风险,并降低其在大规模监测中的效率。为了应对这些挑战并最大限度地减少损失,迫切需要实时火灾探测技术。在这项研究中,我们建议利用人工智能技术,特别是卷积神经网络的深度学习(CNN)来解决这个问题。我们提出的系统分析由IP摄像机捕获并存储在云服务器上的实时图像。其主要目标是检测火灾迹象,并通过移动应用程序及时通知用户,确保及时意识到。为了训练我们的模型,我们通过合并包括火灾和非火灾图像的三个现有数据集,精心组装了一个数据集。此外,我们纳入了可能被误解为火灾的图像,如红色树木、穿着红色衣服的人和红旗。此外,我们用从在线来源获得的未受影响区域的图像补充了数据集。最终数据集包括1588张火灾图像和909张非火灾图像。在评估过程中,我们的模型达到了93.07%的准确率。这使得能够进行有效的检测,从而快速干预和减少损伤。这是一个积极和预防性的解决方案,以打击这些毁灭性的火灾。
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来源期刊
European Journal of Forest Engineering
European Journal of Forest Engineering Agricultural and Biological Sciences-Forestry
CiteScore
1.30
自引率
0.00%
发文量
6
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