首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >APPLICATION OF U-NET CONVOLUTIONAL NEURAL NETWORK TO BUSHFIRE MONITORING IN AUSTRALIA WITH SENTINEL-1/-2 DATA
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APPLICATION OF U-NET CONVOLUTIONAL NEURAL NETWORK TO BUSHFIRE MONITORING IN AUSTRALIA WITH SENTINEL-1/-2 DATA

机译:U-Net卷积神经网络在澳大利亚与Sentinel-1 / -2数据的应用

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This paper aims to define a pipeline architecture for near real-time identification of bushfire impact areas using Geoscience Australia Data Cube (AGDC). A series of catastrophic bushfires from late 2019 to early 2020 have captured international attention with their scale of devastation across four of the most populous states across Australia; New South Wales, Queensland, Victoria and South Australia. The extraction of burned areas using multispectral Sentinel-2 observations are straightforward when no cloud or haze obstruction are present. Without clear-sky observations, precisely locating the bushfire affected regions are difficult to achieve. Sentinel-1 C-band dual-polarized (VH/VV) Synthetic Aperture Radar (SAR) data is introduced to effectively elicit and analyse useful information based on backscattering coefficients, unaffected by adverse weather conditions and lack of sunlight. Burned vegetation results in significant volume scattering; co-/cross-polarised response decreases due to leafless trees, as well as coherence change over fire-disturbed areas; two sensors acquired images in a shortened revisit time over the same effected areas; all of which provided discriminative features for identifying burnt areas. Moreover, applying U-Net deep learning framework to train the recent and historical satellite data leads to an effective pre-trained segmentation model of burnt and non-burnt areas, enabling more timely emergency response, more efficient hazard reduction activities and evacuation planning during severe bushfire events. The advantages of this approach could have profound significance for a more robust, timely and accurate method of bushfire detection, utilising a scalable big data processing framework, to predict the bushfire footprint and fire spread model development.
机译:本文旨在使用地球科学澳大利亚数据立方体(AGDC)来定义靠近实时识别的管道架构。从2019年底到2020年初的一系列灾难性的丛林大火已经捕获了在澳大利亚各地的四个最有害的国家的毁灭性方面的国际重视;新南威尔士州,昆士兰州,维多利亚和南澳大利亚。当没有存在云或雾度阻塞时,使用多光谱哨声-2观察的燃烧区域的提取是简单的。没有明确的天空观察,精确地定位丛林受影响的地区很难实现。 Sentinel-1 C频段双极化(VH / VV)合成孔径雷达(SAR)数据被引入基于反向散射系数的基于反向散射系数的有效信息,不受阳光缺乏影响。烧伤的植被导致大量散射;由于无叶树木,并且在火灾不安地区的一致性变化,共/交叉极化响应减少;两个传感器在相同的影响区域缩短的重生时间中获取图像;所有这些都提供了识别烧焦区域的辨别特征。此外,应用U-Net深度学习框架培训最近和历史卫星数据,导致伯爵和非烧毁区域的有效的预训练分割模型,从而实现了更及时的应急响应,更有效的危害减少活动和严重的疏散计划丛林事件。这种方法的优点可能具有深远的意义,对于利用可扩展的大数据处理框架,采用可扩展的大数据处理框架更加坚固,及时,准确,准确,更准确地进行准确的方法,以预测丛林火箭占地面积和火灾传播模型开发。

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