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Impact of non-local filtering on 3D reconstruction from tomographic SAR data

机译:非局部滤波对断层SAR数据进行3D重建的影响

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In this paper, we introduce two spatially adaptive covariance filtering methods and evaluate their effect on scatterer separation and height estimation from tomographic SAR. The first one was previously introduced for polarimetric data and uses pixel similarities based on Riemannian distances between covariance matrices. The second one is a new method extending the previous one to patch-based similarities. We show the importance of spatial adaptivity in covariance estimation by comparing the 3D reconstructions obtained with our nonlocal filters and the boxcar filter. Our experiments on simulated and L-band experimental data show the ability of the non-local filters to improve the height estimation and scatterer separation in layover areas thanks to their smoothing and edge preserving properties.
机译:在本文中,我们介绍了两种空间自适应协方差滤波方法,并评估了它们对散射体分离和断层成像SAR高度估计的影响。第一个以前是为极化数据引入的,它使用基于协方差矩阵之间的黎曼距离的像素相似度。第二种是将前一种扩展到基于补丁的相似性的新方法。通过比较用我们的非局部滤波器和棚车滤波器获得的3D重建,我们显示了空间适应性在协方差估计中的重要性。我们在模拟和L波段实验数据上进行的实验表明,非局部滤波器由于其平滑和边缘保留特性,可以改善覆盖区域的高度估计和散射体分离。

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