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Flood Monitoring in Vegetated Areas Using Multitemporal Sentinel-1 Data: Impact of Time Series Features

机译:使用Multi8poral Sentinel-1数据的植被区域洪水监测:时间序列功能的影响

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Synthetic Aperture Radar (SAR) is particularly suitable for large-scale mapping of inundations, as this tool allows data acquisition regardless of illumination and weather conditions. Precise information about the flood extent is an essential foundation for local relief workers, decision-makers from crisis management authorities or insurance companies. In order to capture the full extent of the flood, open water and especially temporary flooded vegetation (TFV) areas have to be considered. The Sentinel-1 (S-1) satellite constellation enables the continuous monitoring of the earths surface with a short revisit time. In particular, the ability of S-1 data to penetrate the vegetation provides information about water areas underneath the vegetation. Different TFV types, such as high grassland/reed and forested areas, from independent study areas were analyzed to show both the potential and limitations of a developed SAR time series classification approach using S-1 data. In particular, the time series feature that would be most suitable for the extraction of the TFV for all study areas was investigated in order to demonstrate the potential of the time series approaches for transferability and thus for operational use. It is shown that the result is strongly influenced by the TFV type and by other environmental conditions. A quantitative evaluation of the generated inundation maps for the individual study areas is carried out by optical imagery. It shows that analyzed study areas have obtained Producer’s/User’s accuracy values for TFV between 28% and 90%/77% and 97% for pixel-based classification and between 6% and 91%/74% and 92% for object-based classification depending on the time series feature used. The analysis of the transferability for the time series approach showed that the time series feature based on VV (vertical/vertical) polarization is particularly suitable for deriving TFV types for different study areas and based on pixel elements is recommended for operational use.
机译:合成孔径雷达(SAR)特别适用于淹没的大规模映射,因为该工具允许数据采集,无论照明和天气条件如何。关于洪水范围的精确信息是当地救济工人,危机管理机构或保险公司决策者的基础。为了捕捉洪水的全部范围,必须考虑开放水和尤其是临时洪水植被(TFV)地区。 Sentinel-1(S-1)卫星星座使得能够在短暂的重生时间内连续监测地球表面。特别是,S-1数据渗透植被的能力提供了有关植被下面的水域的信息。分析了不同的TFV类型,例如高草地/芦苇和森林区域,从独立的研究领域进行了使用S-1数据显示开发的SAR时间序列分类方法的潜在和限制。特别地,研究了最适合于所有研究区域提取TFV的时间序列特征,以证明时间序列的可转移性的潜力,从而进行操作使用。结果表明,结果受TFV型和其他环境条件的强烈影响。通过光学图像进行各个研究区域的产生的淹没图的定量评估。它表明,分析的研究区域已经获得了生产者/用户的TFV的精度值28%至90%/ 77%和97%,以获得基于像素的分类,而基于对象的分类的6%和91%/ 74%和92%根据使用的时间序列功能。对时间序列方法的可转换性的分析表明,基于VV(垂直/垂直)偏振的时间序列特征特别适用于导出不同研究区域的TFV类型,并且基于像素元件,建议用于操作使用。

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