Enhancing fire safety through IoT-enabled flame detection systems: A cost-effective and scalable approach

Augustine Obayuwana, Daniel Olah, Sylvester Akinbohun
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Abstract

The Internet of Things (IoT), which connects and automates numerous systems and gadgets, has completely changed how we live and work. One such application of IoT technology is in fire detection systems, which can help prevent and mitigate the devastating effects of fires on different types of facilities. The research presents a n IoT architecture for a fire detection system using small, low-cost cameras to collect surveillance feeds from large buildings. The data is uploaded to the cloud, where a Machine Learning algorithm detects fires in digital images. The proposed architecture consists of cameras, cloud, and clients, using an inexpensive camera for surveillance feeds and a convolutional neural network for image classification based on large datasets. However, the architecture's cloud component processes surveillance feeds and runs a Machine Learning (ML) model, utilizing computing resources for real-time data processing and continuous training for improved accuracy. Clients can subscribe to the data from the cloud and receive alerts in real-time when the ML model detects a fire in the surveillance feeds. There are significant benefits in comparing the proposed design to conventional fire detection systems. First and foremost, it is economical since the cameras used are compact, affordable, and simple to install around the building without the need for elaborate wiring or infrastructure. Secondly, it is scalable, as the cloud provides the necessary computing resources and storage capacity to handle large amounts of data, making it possible to monitor large structures with many cameras.
通过物联网火焰检测系统加强消防安全:具有成本效益且可扩展的方法
物联网(IoT)将众多系统和小工具连接起来并实现自动化,彻底改变了我们的生活和工作方式。物联网技术的一个应用领域就是火灾探测系统,它可以帮助预防和减轻火灾对不同类型设施的破坏性影响。这项研究提出了一种用于火灾探测系统的物联网架构,利用小型、低成本的摄像头收集大型建筑物的监控画面。数据上传到云端,由机器学习算法检测数字图像中的火灾。建议的架构由摄像头、云和客户端组成,使用廉价摄像头采集监控信息,并使用卷积神经网络根据大型数据集进行图像分类。然而,该架构的云组件处理监控馈送并运行机器学习(ML)模型,利用计算资源进行实时数据处理和持续训练,以提高准确性。客户端可从云端订阅数据,并在 ML 模型从监控馈送中检测到火灾时收到实时警报。拟议的设计与传统的火灾探测系统相比有很大的优势。首先,它经济实惠,因为所使用的摄像机结构紧凑、价格低廉,而且无需复杂的布线或基础设施即可安装在建筑物周围。其次,它具有可扩展性,因为云计算提供了处理大量数据所需的计算资源和存储容量,使其能够监控装有许多摄像头的大型建筑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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