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Video SAR Imaging Based on Low-Rank Tensor Recovery

机译:基于低级张量恢复的视频SAR成像

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摘要

Due to its ability of forming continuous images for a ground scene of interest, the video synthetic aperture radar (SAR) has been studied in recent years. However, as video SAR needs to reconstruct many frames, the data are of enormous amount and the imaging process is of large computational cost, which limits its applications. In this article, we exploit the redundancy property of multiframe video SAR data, which can be modeled as low-rank tensor, and formulate the video SAR imaging process as a low-rank tensor recovery problem, which is solved by an efficient alternating minimization method. We empirically compare the proposed method with several state-of-the-art video SAR imaging algorithms, including the fast back-projection (FBP) method and the compressed sensing (CS)-based method. Experiments on both simulated and real data show that the proposed low-rank tensor-based method requires significantly less amount of data samples while achieving similar or better imaging performance.
机译:由于其形成利益地面场景的连续图像的能力,近年来研究了视频合成孔径雷达(SAR)。然而,随着视频SAR需要重建许多帧,数据量很大,成像过程具有大的计算成本,这限制了其应用。在本文中,我们利用了多帧视频SAR数据的冗余属性,该数据可以被建模为低秩张量,并将视频SAR成像过程建模为低秩张恢复问题,这通过有效的交替最小化方法来解决。我们经验与多个最先进的视频SAR成像算法进行明确比较,包括快速后投影(FBP)方法和基于压缩的感测(CS)的方法。两种模拟和实际数据的实验表明,所提出的低级张量的方法需要大量的数据样本,同时实现相似或更好的成像性能。

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