小基线InSAR时间序列分析:解包裹误差校正和降噪

Z. Yunjun, H. Fattahi, F. Amelung
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引用次数: 216

摘要

摘要:本文综述了小基线干涉合成孔径雷达(InSAR)时间序列分析的新处理流程和用Python实现的软件MintPy (https://github.com/insarlab/MintPy)。时间序列分析被表述为加权最小二乘反演。对于无多子集的全连通干涉图网络,如轨道管小、重访时间短的现代SAR卫星,反演结果是无偏的。在常规工作流程中,我们首先反演原始相位时间序列的干涉图叠加,然后校正确定性相位分量:对流层延迟(使用全球大气模型或延迟-高程比)、地形残差和/或相位斜坡,以获得降噪位移时间序列。接下来,我们估计排除SAR噪声的平均速度,这些噪声是使用基于残差相位均方根的离群值检测方法识别的。常规工作流程包括三种新的方法来纠正或排除二维算法的相位展开错误:(i)用最小生成树桥连接可靠区域的桥接方法(特别适用于岛屿),(ii)利用干涉图三组整数模糊性的保守性的相位闭合方法(非常适用于高冗余网络),以及(iii)基于相干的网络修改,以识别和排除剩余相干相位展开误差的干涉图。我们使用Sentinel-1和ALOS-1数据将常规工作流程应用于加拉帕戈斯火山,评估工作流程中关键步骤的质量,并将结果与独立的GPS测量结果进行比较。我们讨论了时间相干作为一种可靠性度量的优点和局限性,评估了网络冗余对InSAR测量精度和可靠性的影响及其对干涉测量对选择的实际意义。与另一个开源时间序列分析软件的比较表明,MintPy在具有挑战性的场景中实现的方法具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small baseline InSAR time series analysis: Unwrapping error correction and noise reduction
Abstract We present a review of small baseline interferometric synthetic aperture radar (InSAR) time series analysis with a new processing workflow and software implemented in Python, named MintPy ( https://github.com/insarlab/MintPy ). The time series analysis is formulated as a weighted least squares inversion. The inversion is unbiased for a fully connected network of interferograms without multiple subsets, such as provided by modern SAR satellites with small orbital tube and short revisit time. In the routine workflow, we first invert the interferogram stack for the raw phase time-series, then correct for the deterministic phase components: the tropospheric delay (using global atmospheric models or the delay-elevation ratio), the topographic residual and/or phase ramp, to obtain the noise-reduced displacement time-series. Next, we estimate the average velocity excluding noisy SAR acquisitions, which are identified using an outlier detection method based on the root mean square of the residual phase. The routine workflow includes three new methods to correct or exclude phase-unwrapping errors for two-dimensional algorithms: (i) the bridging method connecting reliable regions with minimum spanning tree bridges (particularly suitable for islands), (ii) the phase closure method exploiting the conservativeness of the integer ambiguity of interferogram triplets (well suited for highly redundant networks), and (iii) coherence-based network modification to identify and exclude interferograms with remaining coherent phase-unwrapping errors. We apply the routine workflow to the Galapagos volcanoes using Sentinel-1 and ALOS-1 data, assess the qualities of the essential steps in the workflow and compare the results with independent GPS measurements. We discuss the advantages and limitations of temporal coherence as a reliability measure, evaluate the impact of network redundancy on the precision and reliability of the InSAR measurements and its practical implication for interferometric pairs selection. A comparison with another open-source time series analysis software demonstrates the superior performance of the approach implemented in MintPy in challenging scenarios.
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