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Dimension-Reduced Space-Time Adaptive Clutter Suppression Algorithm Based on Lower-Rank Approximation to Weight Matrix in Airborne Radar

机译:基于低秩权重矩阵降阶近似的降维空时自适应杂波抑制算法

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In this paper, we address the dimension-reduced space-time adaptive processing (STAP) techniques for ground clutter suppression in airborne radar from the viewpoint of approximation theory. The weights in the optimum STAP technique can be naturally expressible as the weight matrix. An efficient dimension-reduced space-time adaptive clutter suppression (STACS) algorithm based on lower-rank approximation to weight matrix is established, which finds a set of space-time separable filters to approximate the optimum STAP processor. By exploiting a lower-rank approximation to weight matrix, we make the quadratic cost function used in the classical optimum STAP processor be converted into a biquadratic cost function. To seek a minimum point of the biquadratic cost function, this paper develops an efficient multistage bi-iterative algorithm and the corresponding multistage dimension-reduced technique with a modular structure, where each stage finds an orthogonal component for approximating to the weight matrix. The effectiveness of the STACS algorithm is tested via several experiments.
机译:在本文中,我们从逼近理论的角度出发,解决了机载雷达地面杂波抑制的降维时空自适应处理(STAP)技术。最佳STAP技术中的权重自然可以表示为权重矩阵。建立了基于加权矩阵下秩近似的高效降维时空自适应杂波抑制算法(STACS),该算法找到了一组时空可分离滤波器,以近似最优STAP处理器。通过利用权重矩阵的低阶近似,我们将经典最佳STAP处理器中使用的二次成本函数转换为二次二次成本函数。为了寻求双二次成本函数的最小点,本文开发了一种有效的多级双迭代算法和相应的具有模块化结构的多级降维技术,其中每个级都找到一个正交分量以近似权重矩阵。 STACS算法的有效性通过多个实验进行了测试。

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