ISAR Imaging Based on Homotopy Re-Weighted ℓ1-Norm Minimization

Yuexin Gao, Xinyu Zhang, M. Xing, Jixiang Fu, Zi-jing Zhang, Ying Wang
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引用次数: 1

Abstract

A suitable regularization parameter plays an important role in sparse ISAR imaging algorithms. With a proper regularization parameter, the quality of ISAR images improves. In this paper, the Homotopy re-weighted ℓ1-norm minimization is applied to ISAR imaging. This method is able to choose the accurate regularization parameter for each point in ISAR image with high efficiency. As a result, the imaging results processed by this method contain more details of the target and less artificial points. Both simulated and real data experiments validate the feasibility of the proposed method.
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基于同伦重加权1-范数最小化的ISAR成像
在稀疏ISAR成像算法中,合适的正则化参数至关重要。适当的正则化参数可以提高ISAR图像的质量。本文将同伦重加权1范数最小化方法应用于ISAR成像。该方法能够高效地为ISAR图像中的每个点选择精确的正则化参数。因此,该方法处理的成像结果包含了更多的目标细节和更少的人工点。仿真实验和实际数据实验验证了该方法的可行性。
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