基于深度学习的森林火灾探测与报警系统

Mohnish S, A. P., G. S, Sarath Vignesh A, Pavithra P, E. S.
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引用次数: 2

摘要

在林地或任何森林地区发生的野火或森林火灾会造成空气污染。由于燃烧向大气中释放了大量的二氧化碳、一氧化碳和细颗粒物,对附近地区的植被和野生动物造成了巨大的破坏。本文提出了一种基于深度学习的卷积神经网络(CNN)模型来检测森林火灾。本文主要采用了图像采集、预处理和图像分类等技术。首先,对数据集中的图像进行预处理,并将其输入CNN进行特征提取和检测。此外,硬件设置是使用树莓派实现的,其中火灾探测警报以电子邮件、蜂鸣器和LCD显示器的形式发送给有关当局,在训练和测试数据集上的探测准确率分别为93%和92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning based Forest Fire Detection and Alert System
A Wildfire or Forest Fire that originates within a woodland or any forest area gives rise to air pollution. Since the burning releases huge quantities of carbon di-oxide, carbon monoxide and fine particulate matter into the atmosphere, it causes enormous damage to the vegetation and wildlife in the nearby area. In this paper, a Deep Learning based Convolutional Neural Network (CNN) model is proposed to detect forest fire. In the proposed work, the following techniques are used: Image Collection, Pre-processing and Image Classification. Initially, the images in the dataset are pre-processed, and fed into the CNN for feature extraction and detection. Further, the hardware setup is implemented using Raspberry Pi, in which the fire detection alerts are sent as an e-mail, buzzer and LCD display to the concerned authorities with detection accuracy of 93% and 92% on training and testing datasets, respectively.
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