Radar Forward-looking Imaging Method for Complex Targets Based on L1-Regularized Least Squares

Qingping Liu, Yongqiang Cheng, Kang Liu, Hongqiang Wang
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Abstract

Based on the wavefront modulation technique, we introduced the principle and imaging model of forward-looking imaging. Considering the scattering coefficient distribution of the complex target is no longer sparse, L1-regularized least squares method based on sparse representation is proposed for reconstructing radar images of complex targets. The transformation matrix is generated by the dictionary learning method which provides a sparser representation of the scattering coefficient distribution of the complex target. By inversing the solved sparse vector under the transformation matrix, the reconstruction of complex targets can be realized. Simulation results show the effectiveness of the proposed method.
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基于l1正则化最小二乘的复杂目标雷达前视成像方法
基于波前调制技术,介绍了前视成像的原理和成像模型。考虑到复杂目标散射系数分布不再稀疏,提出了基于稀疏表示的l1正则化最小二乘方法重建复杂目标雷达图像。该变换矩阵采用字典学习方法生成,提供了复杂目标散射系数分布的更稀疏表示。通过对变换矩阵下解出的稀疏向量进行反演,可以实现对复杂目标的重构。仿真结果表明了该方法的有效性。
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