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Estimating uncertainty associated with water stages from a single SAR image

机译:从单个SAR图像估计与水位相关的不确定性

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摘要

It is the goal of remote sensing to infer information about objects or a natural process from a remote location. This invokes that uncertainty in measurement should be viewed as central to remote sensing. In this study, the uncertainty associated with water stages derived from a single SAR image for the Alzette (G.D. of Luxembourg) 2003 flood is assessed using a stepped GLUE procedure. Main uncertain input factors to the SAR processing chain for estimating water stages include geolocation accuracy, spatial filter window size, image thresholding value, DEM vertical precision and the number of river cross sections at which water stages are estimated. Initial results show that even with plausible parameter values uncertainty in water stages over the entire river reach is 2.8 m on average. Adding spatially distributed field water stages to the GLUE analysis following a one-at-a-time approach helps to considerably reduce SAR water stage uncertainty (0.6 m on average) thereby identifying appropriate value ranges for each uncertain SAR water stage processing factor. For the GLUE analysis a Nash-like efficiency criterion adapted to spatial data is proposed whereby acceptable SAR model simulations are required to outperform a simpler regression model based on the field-surveyed average river bed gradient. Weighted CDFs for all factors based on the proposed efficiency criterion allow the generation of reliable uncertainty quantile ranges and 2D maps that show the uncertainty associated with SAR-derived water stages. The stepped GLUE procedure demonstrated that not all field data collected are necessary to achieve maximum constraining. A possible efficient way to decide on relevant locations at which to sample in the field is proposed. It is also suggested that the resulting uncertainty ranges and flood extent or depth maps may be used to evaluate 1D or 2D flood inundation models in terms of water stages, depths or extents. For this, the extended GLUE approach, which copes with the presence of uncertainty in the observed data, may be adopted.
机译:遥感的目标是从远程位置推断有关对象或自然过程的信息。这就要求将测量的不确定性视为遥感的中心。在这项研究中,使用阶梯式GLUE程序评估了2003年阿尔泽特(卢森堡政府)洪水的单个SAR图像中与水位有关的不确定性。用于估算水位的SAR处理链的主要不确定输入因素包括地理位置精度,空间过滤器窗口大小,图像阈值,DEM垂直精度以及估算水位的河流断面数量。初步结果表明,即使参数值合理,整个河段水位的不确定性平均仍为2.8 m。通过一次一次的方法将空间分布的野外水位添加到GLUE分析中,有助于显着降低SAR水位不确定性(平均0.6 m),从而为每个不确定的SAR水位处理因子确定合适的值范围。对于GLUE分析,提出了适用于空间数据的类似Nash的效率标准,据此,需要接受的SAR模型模拟才能胜过基于现场调查的平均河床坡度的简单回归模型。基于提议的效率标准的所有因素的加权CDF允许生成可靠的不确定性分位数范围和2D映射,以显示与SAR得出的水位相关的不确定性。逐步的GLUE程序表明,并非所有采集的现场数据都是实现最大约束所必需的。提出了一种可能的有效方式来决定在现场进行采样的相关位置。还建议将所得的不确定性范围和洪水范围或深度图用于根据水位,深度或范围评估一维或二维洪水淹没模型。为此,可以采用扩展的GLUE方法,以应对观测数据中存在的不确定性。

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