A Variational Bayesian Approach for Multichannel Through-Wall Radar Imaging with Low-Rank and Sparse Priors

Van Ha Tang, A. Bouzerdoum, S. L. Phung
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Abstract

This paper considers the problem of multichannel through-wall radar (TWR) imaging from a probabilistic Bayesian perspective. Given the observed radar signals, a joint distribution of the observed data and latent variables is formulated by incorporating two important beliefs: low-dimensional structure of wall reflections and joint sparsity among channel images. These priors are modeled through probabilistic distributions whose hyperparameters are treated with a full Bayesian formulation. Furthermore, the paper presents a variational Bayesian inference algorithm that captures wall clutter and provides channel images as full posterior distributions. Experimental results on real data show that the proposed model is very effective at removing wall clutter and enhancing target localization.
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多通道低秩稀疏雷达成像的变分贝叶斯方法
从概率贝叶斯的角度研究了多通道穿壁雷达(TWR)成像问题。给定观测到的雷达信号,通过结合两个重要信念:墙反射的低维结构和通道图像之间的联合稀疏性,制定了观测数据和潜在变量的联合分布。这些先验通过概率分布建模,其超参数用全贝叶斯公式处理。此外,本文提出了一种变分贝叶斯推理算法,该算法捕获墙壁杂波并提供信道图像作为完整的后验分布。在实际数据上的实验结果表明,该模型在去除杂波和增强目标定位方面非常有效。
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