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Angular Superresolution of Real Aperture Radar for Target Scale Measurement Using a Generalized Hybrid Regularization Approach

Deqing Mao, Jianyu Yang, Xingyu Tuo, Jiawei Luo, Mengxi Feng, Yulin Huang, Yongchao Zhang, Yin Zhang

2023IEEE Transactions on Geoscience and Remote Sensing17 citationsDOI

Abstract

Scale information is a significant index for target measurement by real aperture radar (RAR). However, the measured target scale information by RAR is inaccurate because of the limited angular resolution. In this paper, to enhance the scale measurement ability of RAR, a generalized hybrid regularization (GHR) approach is proposed by combining the generalized sparse (GS) regularization norm and the generalized total variation (GTV) regularization norm. On the one hand, the GHR approach is proposed to simultaneously enhance the angular resolution and the scale information of targets by combing the generalized regularization norms. The GS regularization norm can improve the reconstructed angular resolution due to its sparsity over the L1 norm. The GTV regularization norm can preserve the steep target contour because of its edge enhancement ability over the total variation (TV) norm. On the other hand, based on the GHR optimization function, an adaptive iterative reweighted (AIR) solver is proposed to reduce the number of manually selected regularization parameters, allowing for accurate scale information reconstruction. Simulations and experiments verify the performance of the proposed method. Based on the proposed approach and solver, the target scale information can be accurately observed.

Topics & Concepts

Regularization (linguistics)Synthetic aperture radarAlgorithmNorm (philosophy)Computer scienceSolverMathematicsMathematical optimizationComputer visionArtificial intelligenceLawPolitical scienceSparse and Compressive Sensing TechniquesOptical measurement and interference techniquesAdvanced SAR Imaging Techniques
Angular Superresolution of Real Aperture Radar for Target Scale Measurement Using a Generalized Hybrid Regularization Approach | Litcius