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A Sparse Bayesian Learning Approach for Through-Wall Radar Imaging of Stationary Targets

机译:固定目标穿墙雷达成像的稀疏贝叶斯学习方法

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摘要

Through-the-wall radar (TWR) imaging is an emerging technology that enables detection and localization of targets behind walls. In practical operations, TWR sensing faces several technical difficulties including strong wall clutter and missing data measurements. This paper proposes a sparse Bayesian learning (SBL) approach for wall-clutter mitigation and scene reconstruction from compressed data measurements. In the proposed approach, SBL is used to model both the intraantenna signal sparsity and interantenna signal correlation for estimating the antenna signals jointly. Here, the Bayesian framework provides a learning paradigm for sharing measurements among spatial positions, leading to accurate and stable antenna signal estimation. Furthermore, the task of wall-clutter mitigation is formulated as a probabilistic inference problem, where the wall-clutter subspace and its dimension are learned automatically using the mechanism of automatic relevant determination. Automatic discrimination between targets and clutter allows an effective target image formation, which is performed using Bayesian approximation. Experimental results with both real and simulated TWR data demonstrate the effectiveness of the SBL approach in indoor target detection and localization.
机译:穿墙雷达(TWR)成像是一项新兴技术,可检测和定位墙后的目标。在实际操作中,TWR传感面临几个技术难题,包括墙面杂乱和数据测量丢失。本文提出了一种稀疏贝叶斯学习(SBL)方法,用于从压缩数据测量中减轻壁杂波和重建场景。在所提出的方法中,SBL用于对天线内信号稀疏度和天线间信号相关性进行建模,以共同估计天线信号。在此,贝叶斯框架提供了一种学习范例,可以在空间位置之间共享测量结果,从而实现准确,稳定的天线信号估计。此外,将壁杂波的缓解任务表述为一个概率推断问题,其中利用自动相关确定机制自动学习壁杂波的子空间及其尺寸。目标和杂波之间的自动区分允许有效的目标图像形成,这是使用贝叶斯近似执行的。真实和模拟TWR数据的实验结果证明了SBL方法在室内目标检测和定位中的有效性。

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