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InSAR processing for volcano monitoring and other near-real time applications

机译:用于火山监测和其他近实时应用的InSAR处理

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Radar interferometry (InSAR, interferometric synthetic aperture radar) is routinely used to measure surface deformation prior to, during, and after volcanic events, although not in a monitoring capacity. The improved data availability of some current satellite missions presents us with the opportunity to do just that. We present here a fast and flexible algorithm to estimate coherence and select points on an interferogram-by-interferogram basis, which overcomes limitations of the conventional boxcar ensemble method in areas of marginal coherence. Time series methods, which offer an alternative way to select coherent points, are typically slow, and do not allow for insertion of new data without reprocessing the entire data set. Our new algorithm calculates the coherence for each point based on an ensemble of points with similar amplitude behavior throughout the data set. The points that behave similarly are selected prior to new images being acquired, on the assumption that the behavior of these nearby points does not change rapidly through time. The resulting coherence estimate is superior in resolution and noise level to the boxcar method. In contrast to most other time series methods, we select a different set of coherent points for each interferogram, avoiding the selection compromise inherent to other time series methods. The relative simplicity of this strategy compared to other time series techniques means we can process new images in about 1 h for a typical setup.
机译:雷达干涉测量法(InSAR,干涉式合成孔径雷达)通常用于测量火山事件之前,之中和之后的表面变形,尽管没有监测能力。当前一些卫星任务的数据可用性得到改善,这使我们有机会做到这一点。我们在这里提出一种快速而灵活的算法来估计相干性并在逐个干涉图的基础上选择点,这克服了传统Boxcar集成方法在边际相干方面的局限性。时间序列方法提供了一种选择相干点的替代方法,通常比较慢,并且不允许在不重新处理整个数据集的情况下插入新数据。我们的新算法基于整个数据集中具有相似幅度行为的点的集合来计算每个点的相干性。在假设这些附近点的行为不会随时间快速变化的前提下,在获取新图像之前选择行为类似的点。所得的相干估计在分辨率和噪声级别上优于Boxcar方法。与大多数其他时间序列方法相比,我们为每个干涉图选择一组不同的相干点,从而避免了其他时间序列方法固有的选择折衷。与其他时间序列技术相比,此策略相对简单,这意味着我们可以在大约1小时内处理典型设置的新图像。

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