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Enhanced through-the-wall radar imaging using Bayesian compressive sensing

机译:使用贝叶斯压缩感测的增强式穿墙雷达成像

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In this paper, a distributed compressive sensing (CS) model is proposed to recover missing data samples along the temporal frequency domain for through-the-wall radar imaging (TWRI). Existing CS-based approaches recover the signal from each antenna independently, without considering the correlations among measurements. The proposed approach, on the other hand, exploits the structure or correlation in the signals received across the array aperture by using a hierarchical Bayesian model to learn a shared prior for the joint reconstruction of the high-resolution radar profiles. A backprojection method is then applied to form the radar image. Experimental results on real TWRI data show that the proposed approach produces better radar images using fewer measurements compared to existing CS-based TWRI methods.
机译:本文提出了一种分布式压缩感知(CS)模型,以沿时频域恢复丢失的数据样本,以进行穿墙雷达成像(TWRI)。现有的基于CS的方法可以独立地恢复来自每个天线的信号,而无需考虑测量之间的相关性。另一方面,通过使用分层贝叶斯模型来学习共享的高分辨率雷达轮廓联合重建先验方法,所提出的方法利用了通过阵列孔径接收的信号的结构或相关性。然后应用反投影方法形成雷达图像。在实际TWRI数据上的实验结果表明,与现有的基于CS的TWRI方法相比,所提出的方法使用更少的测量结果可以产生更好的雷达图像。

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