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Efficient Ground Surface Displacement Monitoring Using Sentinel-1 Data: Integrating Distributed Scatterers (DS) Identified Using Two-Sample t -Test with Persistent Scatterers (PS)

机译:使用Sentinel-1数据进行有效的地面位移监测:集成分布式散射体(DS),并使用带有持久散射体(PS)的两次抽样t检验确定

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Combining persistent scatterers (PS) and distributed scatterers (DS) is important for effective displacement monitoring using time-series of SAR data. However, for large stacks of synthetic aperture radar (SAR) data, the DS analysis using existing algorithms becomes a time-consuming process. Moreover, the whole procedure of DS selection should be repeated as soon as a new SAR acquisition is made, which is challenging considering the short repeat-observation of missions such as Sentinel-1. SqueeSAR is an approach for extracting signals from DS, which first applies a spatiotemporal filter on images and optimizes DS, then incorporates information from both optimized DS and PS points into interferometric SAR (InSAR) time-series analysis. In this study, we followed SqueeSAR and implemented a new approach for DS analysis using two-sample t -test to efficiently identify neighboring pixels with similar behaviour. We evaluated the performance of our approach on 50 Sentinel-1 images acquired over Trondheim in Norway between January 2015 and December 2016. A cross check on the number of the identified neighboring pixels using the Kolmogorov–Smirnov (KS) test, which is employed in the SqueeSAR approach, and the t -test shows that their results are strongly correlated. However, in comparison to KS-test, the t -test is less computationally intensive (98% faster). Moreover, the results obtained by applying the tests under different SAR stack sizes from 40 to 10 show that the t -test is less sensitive to the number of images.
机译:结合使用永久散射体(PS)和分布式散射体(DS)对于使用SAR数据的时间序列进行有效的位移监测非常重要。但是,对于合成孔径雷达(SAR)数据的大量堆栈,使用现有算法进行DS分析变得很耗时。此外,一旦获得新的SAR,就应该重复进行DS选择的整个过程,考虑到对Sentinel-1等任务进行短暂的重复观测,这具有挑战性。 SqueeSAR是一种从DS提取信号的方法,该方法首先在图像上应用时空滤波器并优化DS,然后将来自优化DS和PS点的信息合并到干涉SAR(InSAR)时间序列分析中。在这项研究中,我们遵循了SqueeSAR,并采用两样本t检验实施了一种新的DS分析方法,以有效地识别具有相似行为的相邻像素。我们对2015年1月至2016年12月在挪威特隆赫姆(Trondheim)上采集的50张Sentinel-1图像的性能进行了评估。使用Kolmogorov-Smirnov(KS)测试对所识别的相邻像素的数量进行交叉检查。 SqueeSAR方法和t检验表明它们的结果密切相关。但是,与KS-test相比,t-test的计算强度较低(快98%)。此外,通过在40至10的不同SAR堆栈大小下进行测试而获得的结果表明,t检验对图像数量的敏感性较低。

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