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Multidimensional SAR data analysis based on binary partition trees and the covariance matrix geometry

机译:基于二叉分割树和协方差矩阵几何的多维SAR数据分析

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In this paper, we propose the use of the Binary Partition Tree (BPT) as a region-based and multi-scale image representation to process multidimensional SAR data, with special emphasis on polarimetric SAR data. We also show that this approach could be extended to other types of remote sensing imaging technologies, such as hyperspatial imagery. The Binary Partition Tree contains a lot of information about the image structure at different detail levels. At the same time, this structure represents a convenient vehicle to exploit both the statistical properties, as well as the geometric properties of the multidimensional SAR data given by the covariance matrix. The BPT construction process and its exploitation for PolSAR and temporal data information estimation is analyzed in this work. In particular, this work focuses on the speckle noise filtering problem and the temporal characterization of the image dynamics. Results with real data are presented to illustrate the capabilities of the BPT processing approach, specially to maintain the spatial resolution and the small details of the image.
机译:在本文中,我们建议使用二进制分区树(BPT)作为基于区域的多尺度图像表示来处理多维SAR数据,其中特别强调极化SAR数据。我们还表明,该方法可以扩展到其他类型的遥感影像技术,例如超空间影像。二进制分区树包含许多有关不同细节级别的图像结构的信息。同时,此结构代表了一种方便的工具,可以利用协方差矩阵给出的多维SAR数据的统计属性和几何属性。这项工作分析了BPT的构建过程及其在PolSAR和时间数据信息估计中的开发。特别地,这项工作着重于斑点噪声滤波问题和图像动力学的时间特征。带有真实数据的结果将说明BPT处理方法的功能,特别是保持图像的空间分辨率和微小细节的能力。

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