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Rapid urban flood damage assessment using high resolution remote sensing data and an object-based approach

机译:使用高分辨率遥感数据和基于对象的方法快速城市洪水损伤评估

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Torrential rainfall can generate landslides, flash floods, and debris flows which might become disasters, causing loss of life and damage to property and infrastructure. To respond opportunely to hydrometeorological hazards, it is necessary to assess, rapidly and accurately, damage to the affected area. This is commonly done through time-consuming reconnaissance visits to obtain detailed field information. This paper proposes a methodology which uses: i) high resolution satellite and RGB images from unmanned aerial vehicles (UAV), ii) digital elevation models (DEM), and iii) object-based image analysis (OBIA) for rapid urban flood damage assessment and estimation of the number of houses washed away, or with a total or partial roof collapse, by comparing pre- and post-event data. The case study was Tropical Storm Earl in 2016 that affected the town of Chicahuaxtla, Puebla, Mexico, due to the overflow of the Zempoloantongo River that cuts through the town causing several loss of life and severe property damage. The results indicate that the three-pronged approach proposed herein is able to discriminate changes before and after the event and improve image classification of washed-away or destroyed houses. The overall accuracy of the proposed automatic classification obtained with UAV data had a value of 97.4%. Structural damage was not assessed in this study.
机译:暴雨可以产生山体滑坡,闪光洪水和碎片流动,这可能会变得灾害,造成生命损失和财产和基础设施的损失。为了促进水样危害,有必要评估,快速准确地对受影响区域造成损害。这通常通过耗时的侦察访问来获取详细的现场信息。本文提出了一种方法:i)来自无人机(UAV),II)数字高度模型(DEM)和III)对象的基于对象的图像分析(OBIA)的高分辨率卫星和RGB图像,用于快速城市洪水损伤评估通过比较预先和事件数据和后事件数据来估计房屋数量的房屋数量,或者通过总体覆盖。案例研究是2016年的热带风暴,影响了墨西哥普埃布拉·普埃布拉镇,由于Zempoloantongo河流通过城镇的溢出,导致几次生命损失和严重的财产损失。结果表明,本文提出的三管齐下的方法能够在事件前后区分变化,并改善洗涤或破坏房屋的图像分类。通过UAV数据获得的建议自动分类的总体准确性具有97.4%的值。本研究未评估结构损伤。

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