Development of a Forest Fire Detection System Using a Drone-based Convolutional Neural Network Model

Jihee Lee, Keesin Jeong, Haiyoung Jung
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Abstract

Considering forest fires cause environmental destruction, ecosystem collapse, and severe damage to human lives and nature, developing a real-time, accurate, and stable forest fire detection system has become a critical issue in modern society. In this study, a drone-based forest fire detection system was developed using a convolutional neural network (CNN) model. Real-time forest fire detection models were developed using the CNN-based MobileNet algorithm, and their fire detection performance was evaluated. The main research results indicated that errors decreased and accuracy tended to increase during the model training and validation process as training progressed. Moreover, the V1 model exhibited the highest validation accuracy of 0.9466 among the MobileNet V1, V2, and V3 models and showed the highest accuracy of 0.9667 in evaluating the new test dataset during the model evaluation process.
基于无人机卷积神经网络模型的森林火灾探测系统开发
考虑到森林火灾造成的环境破坏、生态系统崩溃以及对人类生命和自然的严重破坏,开发实时、准确、稳定的森林火灾探测系统已成为现代社会的关键问题。本研究利用卷积神经网络(CNN)模型开发了一种基于无人机的森林火灾探测系统。利用基于cnn的MobileNet算法开发了实时森林火灾探测模型,并对其火灾探测性能进行了评价。主要研究结果表明,在模型训练和验证过程中,随着训练的进行,误差减小,准确率有增加的趋势。在MobileNet V1、V2和V3模型中,V1模型的验证精度最高,为0.9466;在模型评估过程中,对新的测试数据集进行评估时,V1模型的验证精度最高,为0.9667。
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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