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Multi-sensor satellite remote sensing images for flood assessment using swarm intelligence

机译:利用群体智能进行洪水评估的多传感器卫星遥感图像

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This paper investigates a new approach for flood evaluation based on multi-sensor satellite images utilizing swarm intelligence techniques. The swarm intelligence techniques used are Genetic Algorithm (GA) for image registration and Niche Particle Swarm Optimization (NPSO) for image clustering. Analysis of satellite images are applied in two stages: Linear Imaging Self Scanning Sensor (LISS-III) image acquired before-flood and Synthetic Aperture Radar (SAR) image acquired during-flood. In the first step, SAR image is aligned with LISS-III image using GA. The aligned SAR image (during-flood) is used to extract flooded and non-flooded regions where as LISS-III image (before-flood) is used to classify various land cover regions. For this image clustering is carried out where cluster centers are generated using the cluster splitting technique such as NPSO. The data points are grouped into their respective classes using the merging method. Further, the resultant images are overlaid to analyze the extent of the flood in individual land classes. The performance comparisons of these swarm intelligence techniques with conventional methods are presented.
机译:本文研究了一种新的基于群体智能技术的基于多传感器卫星图像的洪水评估方法。使用的群智能技术是用于图像配准的遗传算法(GA)和用于图像聚类的小生境粒子群优化(NPSO)。卫星图像的分析分为两个阶段:洪水前获取的线性成像自扫描传感器(LISS-III)图像和洪水期间获取的合成孔径雷达(SAR)图像。第一步,使用GA将SAR图像与LISS-III图像对齐。对齐的SAR图像(洪水期间)用于提取淹水和非洪水区域,而LISS-III图像(洪水之前)用于对各种土地覆盖区域进行分类。为此,在使用聚类分裂技术(例如NPSO)生成聚类中心的情况下进行图像聚类。使用合并方法将数据点分为各自的类别。此外,将所得图像叠加以分析各个土地类别中的洪水程度。提出了这些群智能技术与常规方法的性能比较。

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