基于时频脉冲联合域处理的SAR宽带干扰抑制

Jia Su, Haojiang Li, Mingliang Tao, Yifei Fan, Ling Wang, H. Tao
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引用次数: 1

摘要

宽带干扰是合成孔径雷达的关键问题,严重影响合成孔径雷达的成像质量。为了有效抑制WBI,提出了一种基于时频脉冲(TF-P)域鲁棒主成分分析的干扰抑制算法。对于TF- p域的SAR回波,有两个有用的特性:1)相邻脉冲中有用信号的TF特性相似,表明有用信号具有低秩特性;2) WBI由于其位置的变化和在TF-P域的稀疏不信任,具有稀疏特征。根据这些性质,应用RPCA方法将TF-P矩阵分解为低秩矩阵(即有用信号)和稀疏矩阵(即WBI)。最后,从回波中重构并减去wbi,实现对干扰的抑制。仿真数据的实验结果表明,该算法不仅能有效地抑制干扰,而且能最大限度地保留有用信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wideband Interference Suppression for SAR by Time-Frequency-Pulse Joint Domain Processing
Wide-band interference (WBI) is a critical issue for synthetic aperture radar (SAR), which may severely affect the imaging quality of SAR systems. To suppress WBI effectively, a novel interference suppression algorithm based on robust principal component analysis (RPCA) in time-frequency-pulse (TF-P) domain is proposed. For SAR echoes in TF-P domain, there are two useful properties: 1) The TF characteristic of useful signal in adjacent pulse are similar, indicating that useful signal has low-rank property; 2) Due to its variation of position and sparsely distrusted in TF-P domain, WBI has sparse characteristic. According to these properties, RPCA method is applied to decompose the TF-P matrix into a low-rank matrix (i.e. useful signal) and a sparse matrix (i.e. WBI). Finally, the WBIs can be reconstructed and subtracted from the echoes to realize the interference suppression. The experimental results of simulated data demonstrate that the proposed algorithm not only can suppress interference effectively, but also preserve the useful information as much as possible.
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