Detection of slump slides on earthen levees using polarimetric SAR imagery

J. Aanstoos, K. Hasan, C. O'Hara, Lalitha Dabbiru, Majid Mahrooghy, R. Nóbrega, Matthew A. Lee
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引用次数: 16

Abstract

Key results are presented of an extensive project studying the use of synthetic aperture radar (SAR) as an aid to the levee screening process. SAR sensors used are: (1) The NASA UAVSAR (Uninhabited Aerial Vehicle SAR), a fully polarimetric L-band SAR capable of sub-meter ground sample distance; and (2) The German TerraSAR-X radar satellite, also multi-polarized and featuring 1-meter GSD, but using an X-band carrier. The study area is a stretch of 230 km of levees along the lower Mississippi River. The L-band measurements can penetrate vegetation and soil somewhat, thus carrying some information on soil texture and moisture which are relevant features to identifying levee vulnerability to slump slides. While X-band does not penetrate as much, its ready availability via satellite makes multitemporal algorithms practical. Various feature types and classification algorithms were applied to the polarimetry data in the project; this paper reports the results of using the Support Vector Machine (SVM) and back-propagation Artificial Neural Network (ANN) classifiers with a combination of the polarimetric backscatter magnitudes and texture features based on the wavelet transform. Ground reference data used to assess classifier performance is based on soil moisture measurements, soil sample tests, and on site visual inspections.
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利用极化SAR图像检测土坝滑坡
本文介绍了一项研究利用合成孔径雷达(SAR)辅助堤防筛分过程的广泛项目的关键结果。使用的SAR传感器有:(1)NASA UAVSAR(无人飞行器SAR),这是一种全极化l波段SAR,能够探测亚米级地面样本距离;(2)德国TerraSAR-X雷达卫星,也是多极化的,具有1米GSD,但使用x波段载波。研究区域是密西西比河下游230公里长的河堤。l波段测量可以穿透植被和土壤,从而携带一些土壤质地和水分信息,这些信息是识别防洪堤滑塌脆弱性的相关特征。虽然x波段不能穿透太多,但它通过卫星的可用性使多时间算法变得可行。本项目对偏振测量数据采用了多种特征类型和分类算法;本文报道了基于小波变换的支持向量机(SVM)和反向传播人工神经网络(ANN)分类器结合极化后向散射强度和纹理特征的分类结果。用于评估分类器性能的地面参考数据是基于土壤湿度测量、土壤样品测试和现场目视检查。
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