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Extraction d'informations de changement à partir des séries temporelles d'images radar à synthèse d'ouverture

机译:改变信息,改变信息,改变信息,图像雷达,合成,改造

摘要

A large number of successfully launched and operated Synthetic Aperture Radar (SAR) satellites has regularly provided multitemporal SAR and polarimetric SAR (PolSAR) images with high and very high spatial resolution over immense areas of the Earth surface. SAR system is appropriate for monitoring tasks thanks to the advantage of operating in all-time and all-weather conditions. With multitemporal data, both spatial and temporal information can simultaneously be exploited to improve the results of researche works. Change detection of specific features within a certain time interval has to deal with a complex processing of SAR data and the so-called speckle which affects the backscattered signal as multiplicative noise.The aim of this thesis is to provide a methodology for simplifying the analysis of multitemporal SAR data. Such methodology can benefit from the advantages of repetitive SAR acquisitions and be able to process different kinds of SAR data (i.e. single, multipolarization SAR, etc.) for various applications. In this thesis, we first propose a general framework based on a spatio-temporal information matrix called emph{Change Detection Matrix} (CDM). This matrix contains temporal neighborhoods which are adaptive to changed and unchanged areas thanks to similarity cross tests. Then, the proposed method is used to perform three different tasks:1) multitemporal change detection with different kinds of changes, which allows the combination of multitemporal pair-wise change maps to improve the performance of change detection resu2) analysis of change dynamics in the observed area, which allows the investigation of temporal evolution of objects of interest;3) nonlocal temporal mean filtering of SAR/PolSAR image time series, which allows us to avoid smoothing change information in the time series during the filtering process.In order to illustrate the relevancy of the proposed method, the experimental works of the thesis is performed on four datasets over two test-sites: Chamonix Mont-Blanc, France and Merapi volcano, Indonesia, with different types of changes (i.e., seasonal evolution, glaciers, volcanic eruption, etc.). Observations of these test-sites are performed on four SAR images time series from single polarization to full polarization, from medium to high, very high spatial resolution: Sentinel-1, ALOS-PALSAR, RADARSAT-2 and TerraSAR-X time series.
机译:大量成功发射和运行的合成孔径雷达(SAR)卫星定期在地球表面的广大区域提供具有高和非常高的空间分辨率的多时间SAR和极化SAR(PolSAR)图像。 SAR系统具有在全天候和全天候条件下运行的优势,适合于监视任务。利用多时相数据,可以同时利用时空信息来改善研究成果。在特定时间间隔内对特定特征进行变化检测必须处理SAR数据的复杂处理,以及所谓的散斑,该散斑会以散射噪声的形式影响反向散射信号。本文的目的是提供一种简化对SAR分析的方法。多时相SAR数据。这种方法可以受益于重复性SAR采集的优势,并且能够为各种应用处理不同种类的SAR数据(即单极化,多极化SAR等)。在本文中,我们首先提出了一个基于时空信息矩阵的通用框架,该矩阵称为emph {Change Detection Matrix}(CDM)。该矩阵包含时间邻域,这些邻域由于相似性交叉测试而适合于变化和不变的区域。然后,该方法用于执行三个不同的任务:1)具有不同种类变化的多时间变化检测,这允许多时间成对变化映射的组合来提高变化检测结果的性能; 2)变化动态分析在观测区域内,这可以研究感兴趣对象的时间演化; 3)SAR / PolSAR图像时间序列的非局部时间均值滤波,这使我们避免了在滤波过程中平滑时间序列中的变化信息。为了说明所提方法的相关性,本文的实验工作是在两个测试地点的四个数据集上进行的:法国夏蒙尼勃朗峰和印度尼西亚默拉皮火山,但变化类型不同(例如,季节性演变,冰川,火山喷发等)。这些测试地点的观测是在从单极化到全极化的四个SAR图像时间序列上进行的,从中到高,非常高的空间分辨率:Sentinel-1,ALOS-PALSAR,RADARSAT-2和TerraSAR-X时间序列。

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    Lê Thu Trang;

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