Abstract

Synthetic aperture radar (SAR) frequently suffers from radio frequency interference (RFI) due to the simultaneous presence of numerous wireless communication signals. Recently, the narrowband RFI is found to possess the low-rank property benefiting from stable frequency occupancy, hence the reconsideration of RFI suppression as a joint sparse and low-rank optimization problem. The existing methods either use the non-sparse useful signal itself as the sparse regularizer, or employ the nuclear norm to approximate the rank function, which punishes all singular values with the same penalty via singular value thresholding (SVT), resulting in the improper punishment problem. Hence, both are consequentially subject to performance limitation. In this paper, a novel dictionary-based nonconvex low-rank minimization (DNLRM) optimization framework is proposed for RFI suppression, which concurrently considers the improvements for both the sparse regularizer and the low-rank regularizer. For the former, an over-completed dictionary is constructed, for which the sparse coefficient acts as the sparse regularizer. For the latter, the rank function is more accurately approximated by innovatively introducing the nonconvex function, for which the supergradient is synchronously used to generate the weighted penalty, thus solving the improper punishment problem. The derivation of the closed-form solution and the convergence analysis are described in detail. Additionally, the adaptive selection scheme for the model parameter is uniquely proposed for further ensuring the practicality of the DNLRM framework. The superiority of the proposed method is demonstrated via not only the RFI-free real SAR data combined with the measured RFI, but the RFI-contaminated real SAR data.

Highlights

  • Synthetic aperture radar (SAR) is an active remote sensing instrument that has been widely used for Earth observation with the special capability of working all-time and all-weather [1,2]

  • For narrowband radio frequency interference (RFI) suppression, the previous literature has put forward plenty of effective methods, which can be divided into three categories, namely nonparametric methods [7,8,9,10,11,12,13], parametric methods [14,15,16], and semiparametric methods [17,18,19,20,21,22,23]

  • We suggest extending the boundary along the decreasing direction of the singular values for better distinguishing the performance for two reasons

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Summary

Introduction

Synthetic aperture radar (SAR) is an active remote sensing instrument that has been widely used for Earth observation with the special capability of working all-time and all-weather [1,2]. Due to the increasingly complex electromagnetic environment, SAR frequently suffers from radio frequency interference (RFI). SAR images can even affect subsequent operations, such as polarimetry, interferometry, and target detection [3,4,5,6], highlighting the importance of RFI suppression. For narrowband RFI suppression, the previous literature has put forward plenty of effective methods, which can be divided into three categories, namely nonparametric methods [7,8,9,10,11,12,13], parametric methods [14,15,16], and semiparametric methods [17,18,19,20,21,22,23].

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