基于深度学习的森林火灾探测方法

Wenjie Wang, Qifu Huang, Haiping Liu, Yanxiang Jia, Qing Chen
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引用次数: 1

摘要

森林火灾隐蔽性大,扑救难度大,对人类和生态环境造成不可弥补的损害。然而,传统的火灾预警技术存在灵敏度和准确性较低的问题。在森林火灾萌芽阶段对其进行准确探测具有重要意义。本文报道了一种提高森林火灾预警能力的技术。分析了常用的火灾探测方法,结合深度学习技术对森林火灾探测进行了研究。通过引入数据增强和特征增强方法,提高了计算效率。通过深度学习YOLO模型的训练与实验相结合,实现了轻量化实时火灾探测技术。结果表明,该方法在火焰数据集上具有较高的精度和灵敏度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forest Fire Detection Method Based on Deep Learning
Forest fire causes irreparable damage to human beings and ecological environment with the big concealment and the difficulty to fight. However, conventional fire warning technologies suffer from relatively low sensitivity and accuracy. It's of great importance to detect the forest fire accurately in the budding stage. Herein, we reported a technology to improve the forest fire early warning capability. We analyzed common fire detection methods, studied the forest fire detection in combination with the deep learning technology. The calculation efficiency was improved by introduction of the data enhancement and feature enhancement methods. The lightweight real-time fire detection technology is realized by combination training the deep learning YOLO model and conducting experiments. And the results show that the proposed methods have high accuracy and sensitivity in flame data set.
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