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Flood Damage Analysis using Landsat TM: Change Vector Analysis Approach

机译:使用Landsat TM进行洪水破坏分析:变化向量分析方法

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摘要

It is increased to utilize satellite image and get information little by little in nowadays. For example, satellite images are used to monitor landslides, earthquakes, volcanoes, ground subsidence and so on. Change detection and analysis is a powerful application of remote sensing, in that the spectral resolution of multi-band sensors can be used to advantage in monitoring both significant and subtle land cover changes over time. In this study, the Landsat TM data was used to detect change areas affected by flood from a heavy rainfall. The study area is the Nakdong River located in the Korean peninsular. Among the several change detection techniques, change vector analysis (CVA), principle component analysis (PCA) and image difference approachs are utilized in this paper. CVA uses any number of spectral bands from multi-date satellite data to produce change image that yield information of the magnitude and direction of differences pixel value. And accuracy assessment was carried out with a change image produced from three techniques. In result, CVA was found to be the most accurate for detecting areas affected by flood with the overall accuracy and Kappa coefficient of 97.27 percent and 94.45 percent, respectively.
机译:如今,利用卫星图像并越来越少地获取信息已得到增加。例如,卫星图像用于监测滑坡,地震,火山,地面沉降等。变化检测和分析是遥感的强大应用,因为多波段传感器的光谱分辨率可用于监测随时间变化的重大和细微土地覆盖变化。在这项研究中,Landsat TM数据用于检测受强降雨洪水影响的变化区域。研究区域是位于朝鲜半岛的那空河。在几种变化检测技术中,本文采用变化矢量分析(CVA),主成分分析(PCA)和图像差异方法。 CVA使用来自多日期卫星数据的任意数量的光谱带来生成变化图像,该变化图像会产生差异像素值的大小和方向信息。并使用三种技术生成的变化图像进行准确性评估。结果,CVA被发现是检测洪水最准确的区域,其总体准确度和Kappa系数分别为97.27%和94.45%。

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