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New Robust Statistics for Change Detection in Time Series of Multivariate SAR Images

机译:用于多元SAR图像时间序列变化检测的新鲁棒统计量

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摘要

This paper explores the problem of change detection in time series of heterogeneous multivariate synthetic aperture radar images. Classical change detection schemes have modeled the data as a realization of Gaussian random vectors and have derived statistical tests under this assumption. However, when considering high-resolution images, the heterogeneous behavior of the scatterers is not well described by a Gaussian model. In this paper, the data model is extended to spherically invariant random vectors where the heterogeneity of the images is accounted for through a deterministic texture parameter. Then, three separate detection problems are considered and generalized likelihood ratio test technique is used to derive statistical tests for each problem. The constant false alarm rate property of the new statistics are studied both theoretically and through simulation. Finally, the performance of the new statistics are studied both in simulation and on real synthetic aperture radar data and compared to Gaussian-derived ones. The study yields promising results when the data are heterogeneous.
机译:本文探讨了异构多元合成孔径雷达图像时间序列中的变化检测问题。经典的变化检测方案已将数据建模为高斯随机向量的实现,并在此假设下得出了统计检验。但是,当考虑高分辨率图像时,高斯模型不能很好地描述散射体的异质性。在本文中,数据模型扩展到球面不变的随机矢量,其中图像的异质性通过确定性纹理参数解决。然后,考虑三个独立的检测问题,并使用广义似然比检验技术来推导每个问题的统计检验。从理论上和通过仿真研究了新统计的恒定误报率特性。最后,在仿真和实际合成孔径雷达数据上研究了新统计的性能,并与高斯派生的雷达数据进行了比较。当数据是异构的时,该研究会产生令人鼓舞的结果。

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