基于CS-TomoSAR的中国高分三号卫星三维初始成像结果

Jing Feng, Shuang Jin, Jinajing Zhang, H. Bi
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摘要

合成孔径雷达层析成像(TomoSAR)能够以高水平的细节对城市建筑物进行三维(3-D)重建。然而,传统的TomoSAR反演频谱估计算法通常基于大数据栈和高分辨率合成孔径雷达(SAR)图像。对于高分三号(GF-3)数据集,可用图像较少,由于图像分辨率低,基线间隔大,传统方法无法实现感兴趣区域的精确三维重建。压缩感知(CS)方法在TomoSAR中具有超分辨率成像能力,可以显著减少三维成像所需的样本数量。利用多信号压缩感知(MCS)理论,提出了一种新的处理流程,实现了中国GF-3卫星数据集的三维重建。该工作流首先利用二维建筑足迹地理信息系统(GIS)数据提取目标建筑的特征。然后,将这些特征作为先验知识引入到估计中,以提高反演精度。最后,为了确保建筑物同一等高线上的散射体排列规律,我们利用总变分(TV)来约束这些散射体的分布。本文利用GF-3卫星数据集生成了北京地区高分辨率的三维点云,展示了GF-3卫星在三维成像方面的潜力。
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Three-dimensional Initial Imaging Result of Chinese Gaofen-3 Satellite Based on CS-TomoSAR
Synthetic aperture radar tomography (TomoSAR) enables three-dimensional (3-D) reconstruction of urban buildings with a high level of details. However, traditional spectrum estimation algorithms for TomoSAR inversion are usually based on large data stacks and high-resolution synthetic aperture radar (SAR) images. For the Gaofen-3 (GF-3) dataset with few available images, due to the low image resolution and large baseline intervals, traditional methods fail to achieve accurate 3-D reconstruction of the interested area. Compressed sensing (CS) method has super-resolution imaging capability in TomoSAR, which can significantly reduce the number of samples required for 3-D imaging. With the help of multi-signal compressed sensing (MCS) theory, this paper introduces a novel processing workflow to achieve 3-D reconstruction of Chinese GF-3 Satellite dataset. This workflow firstly uses two-dimensional (2-D) building footprint geographic information system (GIS) data to extract features of target building. Then, these features are introduced into the estimation as prior knowledge to improve the accuracy of TomoSAR inversion. Finally, to ensure that scatterers on the same contour line of a building are regularly arranged, we exploit total variation (TV) to constrain the distribution of these scatterers. This paper uses the GF-3 dataset to generate high-resolution 3-D point cloud of Beijing, demonstrating the potential of GF-3 satellite for 3-D imaging.
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