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On the Use of Weighted Least-Squares Approaches for Differential Interferometric SAR Analyses: The Weighted Adaptive Variable-lEngth (WAVE) Technique

机译:加权最小二乘法在差分干涉SAR分析中的应用:加权自适应可变长度(WAVE)技术

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摘要

This paper concentrates on the study of the Weighted Least-squares (WLS) approaches for the generation of ground displacement time-series through Differential Interferometric SAR (DInSAR) methods. Usually, within the DInSAR framework, the Weighted Least-squares (WLS) techniques have principally been applied for improving the performance of the phase unwrapping operations as well as for better conveying the inversion of sequences of unwrapped interferograms to generate ground displacement maps. In both cases, the identification of low-coherent areas, where the standard deviation of the phase is high, is requested. In this paper, a WLS method that extends the usability of the Multi-Temporal InSAR (MT-InSAR) Small Baseline Subset (SBAS) algorithm in regions with medium-to-low coherence is presented. In particular, the proposed method relies on the adaptive selection and exploitation, pixel-by-pixel, of the medium-to-high coherent interferograms, only, so as to discard the noisy phase measurements. The selected interferometric phase values are then inverted by solving a WLS optimization problem. Noteworthy, the adopted, pixel-dependent selection of the “good” interferograms to be inverted may lead the available SAR data to be grouped into several disjointed subsets, which are then connected, exploiting the Weighted Singular Value Decomposition (WSVD) method. However, in some critical noisy regions, it may also happen that discarding of the incoherent interferograms may lead to rejecting some SAR acquisitions from the generated ground displacement time-series, at the cost of the reduced temporal sampling of the data measurements. Thus, variable-length ground displacement time-series are generated. The mathematical framework of the developed technique, which is named Weighted Adaptive Variable-lEngth (WAVE), is detailed in the manuscript. The presented experiments have been carried out by applying the WAVE technique to a SAR dataset acquired by the COSMO-SkyMed (CSK) sensors over the Basilicata region, Southern Italy. A cross-comparison analysis between the conventional and the WAVE method has also been provided.
机译:本文着重研究加权最小二乘(WLS)方法,通过差分干涉SAR(DInSAR)方法生成地面位移时间序列。通常,在DInSAR框架内,加权最小二乘(WLS)技术主要用于改善相位展开操作的性能,以及更好地传达展开的干涉图序列的反演以生成地面位移图。在这两种情况下,都要求识别相位标准偏差较大的低相干区域。本文提出了一种WLS方法,该方法在具有中低相干性的区域中扩展了多时间InSAR(MT-InSAR)小基线子集(SBAS)算法的可用性。特别地,所提出的方法仅依赖于中至高相干干涉图的逐像素的自适应选择和利用,从而丢弃了噪声相位测量。然后,通过解决WLS优化问题来反转所选的干涉式相位值。值得注意的是,对要反转的“良好”干涉图的采用的,取决于像素的选择可能导致可用的SAR数据被分组为几个分离的子集,然后利用加权奇异值分解(WSVD)方法进行连接。但是,在某些关键的嘈杂区域中,也可能发生这样的情况,即丢弃不相干的干涉图可能会导致拒绝从生成的地面位移时间序列中获取某些SAR信号,但代价是减少了数据测量的时间采样。因此,产生了可变长度的地面位移时间序列。手稿中详细介绍了已开发技术的数学框架,称为加权自适应可变长度(WAVE)。通过将WAVE技术应用于意大利南部巴西利卡塔地区COSMO-SkyMed(CSK)传感器获取的SAR数据集,进行了所提出的实验。还提供了常规方法与WAVE方法之间的交叉比较分析。

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