An Edge Computing Environment for Early Wildfire Detection

Ahmed Saleem Mahdi, S. A. Mahmood
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引用次数: 7

Abstract

Recently, an increasing demand is growing for installing a rapid response system in forest regions to enable an immediate and appropriate response to wildfires before they spread across vast areas. This paper introduces a multilevel system for early wildfire detection to support public authorities to immediately specify and attend to emergency demands. The presented work is designed and implemented within Edge Computing Infrastructure. At the first level; the dataset samples of wildfire represented by a set of video sequences are collected and labelled for training mode purposes. Then, YOLOv5 deep learning model is adopted in our framework to build a trained model for distinguishing the fire event against non-fire events in binary classification. The proposed system structure comprises IoT entities provided with camera sensor capabilities and NVIDIA Jetson Nano Developer kit as an edge computing environment. At the first level, a video camera is employed to assemble environment information received by the micro-controller middle level to handle and detect the possible fire event presenting in the interested area. The last level is characterized as making a decision by sending a text message and snapshot images to the cloud server. Meanwhile, a set of commands are sent to IoT nodes to operate the speakers and sprinklers, which are strategically assumed to place on the ground to give an alarm and prevent wildlife loss. The proposed system was tested and evaluated using a wildfire dataset constructed by our efforts. The experimental results exhibited 98% accurate detection of fire events in the video sequence. Further, a comparison study is performed in this research to confirm the results obtained from recent methods.
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面向野火早期检测的边缘计算环境
最近,人们对在林区安装快速反应系统的需求越来越大,以便在野火蔓延到大片地区之前对其做出即时和适当的反应。本文介绍了一个多层次的早期野火检测系统,以支持公共当局立即指定和处理紧急需求。所提出的工作是在边缘计算基础设施中设计和实现的。在第一层次;为了训练模式的目的,收集并标记由一组视频序列表示的野火的数据集样本。然后,在我们的框架中采用YOLOv5深度学习模型来构建一个经过训练的模型,用于在二元分类中区分火灾事件和非火灾事件。所提出的系统结构包括具有相机传感器功能的物联网实体和作为边缘计算环境的NVIDIA Jetson Nano Developer套件。在第一级,采用摄像机来收集微控制器中间级接收到的环境信息,以处理和检测感兴趣区域中可能出现的火灾事件。最后一个级别的特征是通过向云服务器发送文本消息和快照图像来做出决定。与此同时,一组命令被发送到物联网节点,以操作扬声器和洒水器,从战略上讲,这些扬声器和洒水装置被假设放置在地面上,以发出警报并防止野生动物损失。使用我们努力构建的野火数据集对所提出的系统进行了测试和评估。实验结果显示,在视频序列中对火灾事件的检测准确率为98%。此外,在本研究中进行了比较研究,以证实从最近的方法中获得的结果。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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