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Nonlocal Compressive Sensing-Based SAR Tomography

机译:基于非局部压缩感知的SAR层析成像

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摘要

Tomographic synthetic aperture radar (TomoSAR) inversion of urban areas is an inherently sparse reconstruction problem and, hence, can be solved using compressive sensing (CS) algorithms. This paper proposes solutions for two notorious problems in this field. First, TomoSAR requires a high number of data sets, which makes the technique expensive. However, it can be shown that the number of acquisitions and the signal-to-noise ratio (SNR) can be traded off against each other, because it is asymptotically only the product of the number of acquisitions and SNR that determines the reconstruction quality. We propose to increase SNR by integrating nonlocal (NL) estimation into the inversion and show that a reasonable reconstruction of buildings from only seven interferograms is feasible. Second, CS-based inversion is computationally expensive and therefore, barely suitable for large-scale applications. We introduce a new fast and accurate algorithm for solving the NL L1-L2-minimization problem, central to CS-based reconstruction algorithms. The applicability of the algorithm is demonstrated using simulated data and TerraSAR-X high-resolution spotlight images over an area in Munich, Germany.
机译:市区的层析成像合成孔径雷达(TomoSAR)反演是固有的稀疏重建问题,因此可以使用压缩感测(CS)算法解决。本文针对该领域中两个臭名昭著的问题提出了解决方案。首先,TomoSAR需要大量数据集,这使该技术变得昂贵。但是,可以看出,采集数量和信噪比(SNR)可以相互权衡,因为渐近地,仅采集数量和SNR的乘积决定了重建质量。我们建议通过将非本地(NL)估计值整合到反演中来提高SNR,并表明仅使用七个干涉图对建筑物进行合理的重建是可行的。其次,基于CS的反演计算量大,因此几乎不适合大规模应用。我们介绍了一种新的快速准确的算法,用于解决NL L1-L2最小化问题,这是基于CS的重建算法的核心。使用模拟数据和TerraSAR-X高分辨率聚光灯图像演示了该算法在德国慕尼黑地区的适用性。

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