洪水测绘的多传感器技术

M. Andrade, Luciana Souza Brabo
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引用次数: 0

摘要

本文的目的是利用多传感器技术绘制阿克里州(巴西亚马逊盆地)tarauac市的洪水区域地图。洪水是亚马逊地区最常见的灾害,尽管洪水和风险测绘直到最近才被政府问题所界定。洪水制图方法包括合成孔径雷达(SAR) (Sentinel-1/S1)和光学传感器(Sentinel-2/S2)数据,并采用融合方法。在Sentinel-1 VV和NDWI Sentinel-2上测量了洪水扩展,并根据S1和S2融合和分类(土壤暴露、城市、植被、阴影、水和云)进行了无监督分类。最终的总面积变化为8.23 km²(S1), 7.86 km²(NDWI-S2)和11.87 km²(多传感器融合)。融合S1S2结果从全局精度(70%)、遗漏误差(土壤暴露0;25城市31日;87年植被,5;影、水、云0),委托误差(土壤暴露50;城市0;植被75;阴影6,25,水6,25,云87,5),kappa指数为0.59。使用多传感器是计算洪水扩展的另一种选择,可以帮助绘制亚马逊城市的水文灾害地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MULTI-SENSOR TECHNIQUES TO FLOOD MAPPING
The aim of this article is to map the flooding area in the Tarauacá city of Acre State (Amazon basin, Brazil) using multi-sensor techniques. Floods are the most common disaster in the Amazon, even though flood and risk mapping has only recently been delimited by governmental issues. The methods to flood mapping included Synthetic Aperture Radar (SAR) (Sentinel-1/S1) and optical sensor (Sentinel-2/S2) data, separately, and in a fusion approach. The flood extend was measured on Sentinel-1 VV, on NDWI Sentinel-2, and on unsupervised classification from S1 and S2 fusion and classes: soil exposed, urban, vegetation, shadow, water and clouds. The resulting total areas vary by 8.23 km² (S1), 7.86 km² (NDWI-S2), and 11.87 km² (multi-sensor fusion). The fusion S1S2 results were validated from the calculation of global accuracy (70%), errors of omission (soil exposed 0; urban 31,25; vegetation 87,5; shadow, water and clouds 0), commission errors (soil exposed 50; urban 0; vegetation 75; shadow 6,25, water 6,25 and clouds 87,5), and the kappa index (0.59). Using multi-sensors is an alternative to calculate flood extension and can aid in mapping hydrological hazards in Amazon cities.
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