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ISAR imaging using a null space ℓ1 minimizing Kalman filter approach

机译:使用零空间ℓ1最小化卡尔曼滤波方法的ISAR成像

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摘要

In this paper, we presented a novel compressive sensing (CS) imaging method for inverse synthetic aperture radar (ISAR) exploiting the null space of the sensing matrix. We decompose the solution of the underdetermined linear imaging system into two parts: an observable part that is not unique and a non-observable part lying in the null space of the sensing matrix. We first obtain a weighted least square (WLS) solution/image using the available measurements. Then, the ℓ1 norm of the unknowns is introduced as an additional nonlinear measurement to the underdetermined imaging system. Unlike existing CS reconstruction methods that estimate the unknowns straightforward, we estimate the null space part using this nonlinear “pseudo” measurement in the framework of Kalman filter with the aim to minimize the ℓ1 norm of the whole solution. We demonstrate the performance of the proposed method using real ISAR data. The results show that our imaging method can provide better reconstructed images as compared to the Primal-dual ℓ1 minimization method and the typical greedy type sparse reconstruction method, orthogonal matching pursuit (OMP) method. As the number of measurements increases, our method can work more efficiently while both Primal-dual and OMP methods become slower and in particular, the primal-dual algorithm becomes much slower than the presented imaging method.
机译:在本文中,我们提出了一种新的用于逆合成孔径雷达(ISAR)的压缩传感(CS)成像方法,该方法利用了传感矩阵的零空间。我们将欠定线性成像系统的解决方案分解为两部分:一个不是唯一的可观察部分,另一个是位于传感矩阵零空间中的非可观察部分。我们首先使用可用的度量获得加权最小二乘(WLS)解决方案/图像。然后,将未知数的ℓ1范数引入到欠定成像系统中,作为附加的非线性度量。与现有的CS重建方法直接估算未知数不同,我们在Kalman滤波器的框架内使用这种非线性“伪”测量来估算零空间部分,目的是使整个解决方案的ℓ1范数最小。我们演示了使用实际的ISAR数据提出的方法的性能。结果表明,与Primal-dualℓ1最小化方法和典型的贪婪型稀疏重建方法,正交匹配追踪(OMP)方法相比,我们的成像方法可以提供更好的重建图像。随着测量次数的增加,我们的方法可以更有效地工作,而Primal-dual和OMP方法都变得更慢,特别是,Primal-dual算法比提出的成像方法要慢得多。

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