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A Grid-Less Total Variation Minimization-Based Space-Time Adaptive Processing for Airborne Radar

机译:基于网格的总变化最小化的空降雷达时空自适应加工

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摘要

Sparse recovery (SR) based space-time adaptive processing (STAP) has attracted much attention due to its small requirement of snapshots in the estimation of the clutter plus noise covariance matrix (CNCM). However, most of the existing SR STAP methods suffer from the grid mismatch effect of the dictionary matrix. In this paper, a novel grid-less total variation minimization (TVM) based STAP approach is proposed, which avoids the discretization of the spatial-temporal profile and possible mismatch of the spatial-temporal gird. The optimization problem is firstly introduced to estimate the clutter subspace steering vector by minimizing the defined atomic norm based on the TVM. Then the optimization problem is reformulated via utilizing the property of the radar space-time steering vector and approximation of the Bessel function. Finally, with a solution obtained by the optimization problem, a projection method is presented to obtain an accurate estimation of the CNCM. The proposed STAP method can be applied for both the side-looking and non-side-looking case. Numerical results validate its effectiveness compared with the other SR STAP methods.
机译:稀疏的恢复(SR)基于时空自适应处理(STAP)由于其在估计Clutter Plus噪声协方差矩阵(CNCM)的估计中的少量需求而引起了很多关注。然而,大多数现有的SR STAP方法遭受字典矩阵的网格不匹配效果。本文提出了一种新的网格总变化最小化(TVM)的STAP方法,其避免了空间曲线的离散化和空间态度的可能不匹配。首先引入优化问题以通过最小化基于TVM的定义的原子规范来估计杂波子空间转向载体。然后,优化问题是通过利用雷达时空转向向量的性质和贝塞尔函数的近似的性质来重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新重新格式化。最后,利用通过优化问题获得的解决方案,提出了一种投影方法以获得CNCM的精确估计。所提出的STAP方法可以应用于侧面看和非侧面的情况。与其他SR STAP方法相比,数值结果验证了其有效性。

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