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Automatic near real-time flood detection in high resolution X-band synthetic aperture radar satellite data using context-based classification on irregular graphs

机译:利用基于上下文的不规则图分类,对高分辨率X波段合成孔径雷达卫星数据进行近实时洪水检测

摘要

This thesis is an outcome of the project “Flood and damage assessment using very high resolution SAR data” (SAR-HQ), which is embedded in the interdisciplinary oriented RIMAX (Risk Management of Extreme Flood Events) programme, funded by the Federal Ministry of Education and Research (BMBF). It comprises the results of three scientific papers on automatic near real-time flood detection in high resolution X-band synthetic aperture radar (SAR) satellite data for operational rapid mapping activities in terms of disaster and crisis-management support.Flood situations seem to become more frequent and destructive in many regions of the world. A rising awareness of the availability of satellite based cartographic information has led to an increase in requests to corresponding mapping services to support civil-protection and relief organizations with disaster-related mapping and analysis activities. Due to the rising number of satellite systems with high revisit frequencies, a strengthened pool of SAR data is available during operational flood mapping activities. This offers the possibility to observe the whole extent of even large-scale flood events and their spatio-temporal evolution, but also calls for computationally efficient and automatic flood detection methods, which should drastically reduce the user input required by an active image interpreter.This thesis provides solutions for the near real-time derivation of detailed flood parameters such as flood extent, flood-related backscatter changes as well as flood classification probabilities from the new generation of high resolution X-band SAR satellite imagery in a completely unsupervised way. These data are, in comparison to images from conventional medium-resolution SAR sensors, characterized by an increased intra-class and decreased inter-class variability due to the reduced mixed pixel phenomenon. This problem is addressed by utilizing multi-contextual models on irregular hierarchical graphs, which consider that semantic image information is less represented in single pixels but in homogeneous image objects and their mutual relation. A hybrid Markov random field (MRF) model is developed, which integrates scale-dependent as well as spatio-temporal contextual information into the classification process by combining hierarchical causal Markov image modeling on automatically generated irregular hierarchical graphs with noncausal Markov modeling related to planar MRFs. This model is initialized in an unsupervised manner by an automatic tile-based thresholding approach, which solves the flood detection problem in large-size SAR data with small a priori class probabilities by statistical parameterization of local bi-modal class-conditional density functions in a time efficient manner.Experiments performed on TerraSAR-X StripMap data of Southwest England and ScanSAR data of north-eastern Namibia during large-scale flooding show the effectiveness of the proposed methods in terms of classification accuracy, computational performance, and transferability. It is further demonstrated that hierarchical causal Markov models such as hierarchical maximum a posteriori (HMAP) and hierarchical marginal posterior mode (HMPM) estimation can be effectively used for modeling the inter-spatial context of X-band SAR data in terms of flood and change detection purposes. Although the HMPM estimator is computationally more demanding than the HMAP estimator, it is found to be more suitable in terms of classification accuracy. Further, it offers the possibility to compute marginal posterior entropy-based confidence maps, which are used for the generation of flood possibility maps that express that the uncertainty in labeling of each image element. The supplementary integration of intra-spatial and, optionally, temporal contextual information into the Markov model results in a reduction of classification errors. It is observed that the application of the hybrid multi-contextual Markov model on irregular graphs is able to enhance classification results in comparison to modeling on regular structures of quadtrees, which is the hierarchical representation of images usually used in MRF-based image analysis.X-band SAR systems are generally not suited for detecting flooding under dense vegetation canopies such as forests due to the low capability of the X-band signal to penetrate into media. Within this thesis a method is proposed for the automatic derivation of flood areas beneath shrubs and grasses from TerraSAR-X data. Furthermore, an approach is developed, which combines high resolution topographic information with multi-scale image segmentation to enhance the mapping accuracy in areas consisting of flooded vegetation and anthropogenic objects as well as to remove non-water look-alike areas.
机译:本论文是“使用超高分辨率SAR数据进行洪灾和破坏评估”项目(SAR-HQ)的成果,该项目已嵌入跨学科的RIMAX(极端洪水事件风险管理)计划,该计划由联邦政府资助。教育与研究(BMBF)。它包括三篇关于在高分辨率X波段合成孔径雷达(SAR)卫星数据中进行近乎实时的自动洪水探测的科学论文的结果,用于在灾害和危机管理支持方面进行业务快速制图活动。在世界许多地区更加频繁且具有破坏性。对基于卫星的制图信息的可用性的认识不断提高,导致对相应测绘服务的需求增加,以支持与灾害相关的测绘和分析活动的民防和救济组织。由于具有较高重访频率的卫星系统的数量不断增加,因此在进行业务洪水制图活动期间,可以得到更多的SAR数据。这为观察大规模洪水事件及其时空演变的整个范围提供了可能,但也要求计算效率高且自动的洪水检测方法,这将大大减少有源图像解释器所需的用户输入。论文以完全不受监督的方式,为新一代高分辨率X波段SAR卫星图像的近洪水参数(如洪水范围,与洪水有关的后向散射变化以及洪水分类概率)的近实时导出提供了解决方案。与来自常规中分辨率SAR传感器的图像相比,这些数据的特征是由于减少的混合像素现象而增加了类内变异性和类间变异性。通过在不规则层次图上使用多上下文模型解决了此问题,该模型认为语义图像信息较少在单个像素中表示,而在同类图像对象及其相互关系中表示。建立了混合马尔可夫随机场(MRF)模型,该模型通过将自动生成的不规则分层图上的分层因果Markov图像建模与与平面MRF相关的非因果Markov建模相结合,将尺度相关以及时空上下文信息集成到分类过程中。通过基于图块的自动阈值化方法以无监督的方式初始化该模型,该方法通过对局部双峰类别条件密度函数的统计参数化来解决先验类别概率较小的大型SAR数据中的洪水检测问题。在大规模洪水期间,对英格兰西南部的TerraSAR-X StripMap数据和纳米比亚东北部的ScanSAR数据进行的实验表明,该方法在分类准确性,计算性能和可传递性方面是有效的。进一步证明,分层的因果马尔可夫模型(例如,分层的最大后验(HMAP)和分层的边缘后验模式(HMPM)估计)可以有效地用于根据泛洪和变化对X带SAR数据的空间背景进行建模。检测目的。尽管HMPM估计器在计算上比HMAP估计器要高,但发现它在分类精度方面更合适。此外,它提供了计算基于边缘后验熵的置信度图的可能性,该置信度图用于生成泛洪可能性图,泛洪可能性图表达了每个图像元素的标注不确定性。将内部空间信息和(可选)时间上下文信息补充集成到马尔可夫模型中,可减少分类错误。可以看出,与在基于四叉树的规则结构上建模相比,在不规则图上应用混合多上下文马尔可夫模型能够增强分类结果,后者是通常在基于MRF的图像分析中使用的图像的层次表示形式。由于X波段信号渗透到媒体中的能力很弱,因此波段SAR系统通常不适合在茂密的植被冠层(例如森林)下检测洪水。本文提出了一种从TerraSAR-X数据自动推导出灌木和草丛下的洪水区的方法。此外,还开发了一种方法,该方法将高分辨率的地形信息与多尺度图像分割相结合,以增强由淹没的植被和人为物体组成的区域中的制图精度,并去除非水样区域。

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    Martinis Sandro;

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  • 年度 2010
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