基于地球遥感成像仪自动处理的森林火灾效应评价

Andrew I. Valasiuk, Antonina A. Topaz
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引用次数: 0

摘要

本文基于Sentinel-2A和Sentinel-2B的不同时间卫星图像,利用差分归一化燃烧比指数(dNBR)对火灾前和火灾后时期进行了计算,研究了火灾穿越森林覆盖地区的自动探测细节。对研究题目进行了研究,并对目前运作的森林火灾监测系统进行了审查。开发和测试使用开放源码软件和地球遥感数据评估森林火灾后果的自动化系统的紧迫性已得到证实。根据不同日期捕获的Sentinel-2A和Sentinel-2B卫星图像计算的差分指数dNBR已经确定,可以有效地探测烧毁地区。它表明,Python生态系统使成功创建自动处理地球遥感数据的系统成为可能。根据Sentinel-2A和Sentinel-2B航天器不同日期的卫星图像材料,开发了自动探测火灾覆盖地区的系统原型。给出了利用该系统处理地球遥感数据的算法流程图。针对火灾前后的Sentinel-2卫星图像,计算了dNBR差分指数,分析结果表明,dNBR指数与该区域的烧毁程度密切相关。已经绘制了受火灾影响地区的示意图,并通过计算混淆矩阵来评估确定烧毁地区的准确性。已经对确定受森林火灾影响地区的自动化系统的有效性、其现代化和改进的方法以及在生产中实施的前景进行了评估。值得注意的是,所创建系统的结果具有高可靠性指标。与此同时,在确定经历了部分倦怠的领域时,需要增加系统的敏感性。提出了一种改进工作中使用的算法的变体,通过引入多层Otsu方法,旨在显着提高系统的灵敏度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of forest fire effects based on automated processing of Earth remote sensing imager
The article presents a study of the automated detection specifics within forest-covered areas traversed by fires based on the different time satellite imagery from the Sentinel-2A and Sentinel-2B using the differential normalised burn ratio index (dNBR) for the pre-fire and post-fire periods the calculation. The studies carried out on the research topic are given and a review of the currently functioning forest fire monitoring systems has been implemented. The urgency of the development and testing of an automated system for assessing the forest fire consequences using open source software and Earth remote sensing data has been substantiated. It has been established that the differential index dNBR, calculated from the Sentinel-2A and Sentinel-2B satellite images captured on different dates makes it possible to effectively detect burned-out areas. It is shown that the Python ecosystem makes it possible to successfully create systems for automated processing of Earth remote sensing data. A prototype of a system for the automated detection of forest-covered areas traversed by fires has been developed, based on the materials of different dates satellite imagery from Sentinel-2A and Sentinel-2B spacecraft. The flowchart of the algorithm of processing Earth remote sensing data using the proposed system was presented. For the Sentinel-2 satellite images for the dates before and after the fire, the differential index dNBR was calculated, the analysis of the results of which showed a close correlation of the dNBR index with the degree of burnout of the territory. A schematic map of the areas affected by the fire has been drawn up and the accuracy of identifying burnedout areas has been assessed by calculating the confusion matrix. An assessment of the effectiveness of the automated system for identifying areas affected by forest fires, ways of its modernisation and improvement, as well as the prospects for implementation in production has been carried out. It is noted that the results of the created system have high reliability indicators. At the same time, the need was revealed to increase the sensitivity of the system when identifying areas that have undergone partial burnout. A variant of improving the algorithms used in the work by introducing the multilevel Otsu’s method, intended to significantly increase the sensitivity of the system, has been proposed.
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