Detection of single scatterers in multilook SAR Tomography

D. Reale, Walter Franzé, A. Pauciullo, F. Sica, S. Verde, G. Fornaro
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引用次数: 1

Abstract

Many recent interferometric and tomographic SAR algorithms aimed at enhancing the monitoring performances on distributed areas affected by decorrelation phenomena have been proposed in the last years. These algorithms are based on the exploitation of the data covariance matrix, estimated on real data through the coherent averaging of statistically similar pixels, to improve signal-to-noise ratio and extract a decorrelation-filtered interferometric signal. Estimation of the covariance matrix on real data is, however, a challenging task since multilooking typically implies biased estimations as well as resolution losses which have to be properly handled. In this paper we discuss about the state-of-the-art and open issues for accurate estimation of covariance matrices on real data, for the applications in scatterer detection in SAR Tomography.
多视点SAR成像中单散射体的检测
近年来提出了许多干涉和层析SAR算法,旨在提高对受去相关现象影响的分布区域的监测性能。这些算法基于对数据协方差矩阵的利用,通过对统计上相似的像素进行相干平均来估计真实数据,以提高信噪比并提取去相关滤波的干涉信号。然而,对真实数据的协方差矩阵的估计是一项具有挑战性的任务,因为多视通常意味着有偏差的估计以及必须妥善处理的分辨率损失。本文讨论了在实际数据上准确估计协方差矩阵在SAR层析成像散射体检测中的应用的最新进展和有待解决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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