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Early Forest Fire Region Segmentation Based on Deep Learning

机译:基于深度学习的早期森林消防区分割

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As the forest fire can bring about great property loss and ecological disaster, artificial intelligence-based forest fire monitoring system has gained popularity in recent years to enable the fire alarm quickly and accurately. In this paper, considering that the fire area is very small and hard to be detected using traditional method for detection early forest fire, we propose a novel forest fire monitoring framework based on convolutional neutral networks. In order to validate that the proposed framework can improve effectiveness and accuracy of detecting the early forest fires, many groups of fire detection experiments using a self-generated forest fire dataset and two real forest fire monitor videos are conducted. The experiment results demonstrate its capability to work in various challenging fire and illumination conditions presented in the study, and show that the framework can effectively detect the early forest fire.
机译:随着森林火灾可以带来巨大的财产损失和生态灾害,近年来,人工智能的森林火灾监测系统越来越受欢迎,以便快速准确地实现火灾报警。在本文中,考虑到使用传统的检测早期森林火灾方法非常小,难以检测到难以检测到的,我们提出了一种基于卷积中立网络的新型森林火灾监测框架。为了验证所提出的框架可以提高检测早期森林火灾的有效性和准确性,使用自我产生的森林火灾数据集和两个真正的森林火灾监视器视频进行多组火灾探测实验。实验结果表明其在研究中提供的各种挑战性火灾和照明条件的能力,并表明该框架可以有效地检测早期的森林火灾。

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