基于自适应时间子集多时相InSAR方法的城市地区时空变化检测

Fengming Hu, Jicang Wu
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引用次数: 0

摘要

合成孔径雷达(SAR)图像能够在较短的重审时间内检测到城市区域的变化。目前大多数基于SAR图像的变化检测方法都是利用图像对进行的。但是,由于振幅观测值对周围环境的变化很敏感,且变化类型未知,变化检测结果不可靠。本文提出了一种基于自适应时间子集的多时相InSAR变化检测方法。为了识别时域的步长变化,提出了利用幅度时间序列进行单像素变化检测的方法。然后利用干涉相位时间序列估计变形速度和确定相干间隔等参数。利用识别出的TCS,我们根据它们的相干间隔来区分不同类型的变化。该方法的主要优点是可靠的无监督变化检测和在没有附加信息的情况下检测不同类型的变化。实验结果表明,该方法能很好地识别出出现和消失的建筑物及其步长,COSMO-Skyed上升和下降图像的结果吻合较好。
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Spatial-temporal Change Detection in Urban Area Using Adaptive Temporal Subset Multi-temporal InSAR Method
Synthetic aperture radar (SAR) images are able to detect changes in an urban area with short revisited time. Most presented change detection methods based on SAR images are conducted using couples of the images. However, the change detection results are not reliable since the amplitude observations are sensitive to the change of surroundings and the types of changes are unknown. Here we propose a new change detection method using an adaptive temporal subset multi-temporal InSAR method. Single pixel change detection is developed using amplitude time series in order to identify the step-times: changes in the temporal domain. Then the parameters, e.g. deformation velocity are estimated and the coherent intervals are determined using interferometric phase time series. With the identified TCS, we distinguish different types of changes based on their coherent intervals. The main advantages of our method are reliable unsupervised change detection and detecting different types of changes without additional information. Experimental results by proposed method show that both appearing and disappearing buildings with their step-times are successfully identified and results by COSMO-Skyed ascending and descending images show a good agreement.
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