利用深度学习进行森林火灾探测的卫星数据

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引用次数: 0

摘要

野火是毁灭性的自然灾害,会对地球生态系统造成破坏。许多检测和绘图系统使用了很多工具,包括人工智能方法和良好的人类观察。最常用的系统之一是卫星。遥感图像因其覆盖面积大而被广泛应用于森林火灾探测(FFD),其中采用了传统的和深度学习的方法。在过去的十年中,深度学习技术在遥感问题上取得了可喜的成果。本研究使用Landsat-8图像数据集和深度卷积网络方法进行FFD。本文所使用的网络具有同时使用不同大小的多个核的特点。在这项工作中,为了提高森林火灾检测的性能,我们在深度学习输入层中使用了几个数据:Landsat-8的2、6和7波段,以及森林火灾指数值,这是FFD的强大指标。本研究中使用了三种不同的场景,每种场景有3个网络配置,总共有9个不同的模型,使用3x3、5x5和7x7的多个内核。本文所使用的Landsat-8图像数据集和深度神经网络模型在多次高难度测试中对不同形状和不同大小的森林火灾进行了较好的检测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Satellite Data for Forest Fire Detection using Deep learning
Wildfires are devastating natural disasters that cause damage in the earth's ecosystem. Many detection and mapping systems which are created use a lot of tools, including artificial intelligence methods and good human observations. One of the most used systems is satellite. Remote sensing imagery is widely used for forest fire detection (FFD) due to their large zone coverage, which uses traditional and deep learning methods. In the last decade deep learning techniques have given promising results in remote sensing problems. This study uses Landsat-8 images dataset and deep convolutional network method for FFD. The network used in this paper has a special characteristic which is using simultaneously multiple kernels with different sizes. In this work, to improve the performance of forest fire detection, we have used several data in the deep learning input layer: bands 2, 6 and 7 of Landsat-8, and Forest Fire Index value, which is powerful index for FFD. Three different scenarios were used in this study with 3 network configurations for each one, resulting in 9 total distinct models, using multiple kernels of 3x3, 5x5 and 7x7. Landsat-8 images dataset and deep neural network model used in this paper have given good results in detecting forest fires of distinct shapes and different sizes in multiple difficult tests
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