Sparse autofocus via Bayesian learning iterative maximum and applied for LASAR 3-D imaging

Shunjun Wei, Xiao-Ling Zhang, Jun Shi
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引用次数: 11

Abstract

Linear array SAR (LASAR) is a promising 3-D radar imaging technology. As 3-D radar images usually exhibit strong sparsity, compressed sensing sparse recovery algorithms can be used for LASAR imaging even if the echoes are under-sampled. However, most of the existing sparse recovery algorithms assume exact knowledge of the signal acquisition model, which is impractical for LASAR due to the phase errors are inevitable caused by uncertainties. In this paper, a novel sparse autofocus algorithm is proposed for LASAR imaging via Bayesian learning iterative maximum. In the scheme, the sparse scatterering coefficients are treated as exponential distribution and the phase errors are assumed as uniform distribution. Exploiting the Bayesian learning and maximum likelihood estimation, the approach solves a joint optimization problem to achieve phase errors estimation and image formation simultaneously. Simulation and experimental results are presented to confirm the effectiveness of the algorithm.
基于贝叶斯学习迭代极大值的稀疏自动聚焦在激光雷达三维成像中的应用
线性阵列SAR (LASAR)是一种很有前途的三维雷达成像技术。由于三维雷达图像通常具有很强的稀疏性,因此压缩感知稀疏恢复算法可以用于激光雷达成像,即使回波是欠采样的。然而,现有的稀疏恢复算法大多假设了信号采集模型的精确知识,这对于激光雷达来说是不现实的,因为不确定性不可避免地会导致相位误差。本文提出了一种基于贝叶斯学习迭代极大值的激光雷达成像稀疏自动聚焦算法。该方案将稀疏散射系数视为指数分布,相位误差假设为均匀分布。该方法利用贝叶斯学习和极大似然估计,解决了相位误差估计和图像生成同时进行的联合优化问题。仿真和实验结果验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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