Joint low-rank and sparse based image reconstruction for through-the-wall radar imaging

F. Tivive, A. Bouzerdoum
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Abstract

Through-the-wall radar uses electromagnetic waves to detect and discern targets behind opaque obstacles, such as doors and walls. Wall clutter mitigation and scene reconstruction are performed to produce the image of the behind-the-wall scene. These two problems, however, are often addressed separately, which may result in a suboptimal solution. In this paper, the wall clutter removal and image formation are unified as a joint low-rank and sparsity constrained optimization problem, which is solved using augmented Lagrange multiplier method. Experimental results shows that the proposed method produces clearer images than the existing method that uses a wall clutter mitigation method in conjunction with backprojection method for imaging.
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基于联合低秩稀疏的穿墙雷达成像图像重建
穿墙雷达利用电磁波探测和识别不透明障碍物(如门和墙)后面的目标。对墙杂波进行抑制和场景重建,生成墙后场景的图像。然而,这两个问题通常是分开处理的,这可能会导致次优解决方案。本文将墙体杂波去除和图像形成统一为一个联合的低秩稀疏约束优化问题,采用增广拉格朗日乘子法进行求解。实验结果表明,该方法比现有的墙杂波抑制方法与反向投影方法相结合的成像方法产生的图像更清晰。
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