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Source Estimation Using Coprime Array: A Sparse Reconstruction Perspective

机译:使用互质数组的源估计:稀疏重构的角度

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摘要

Direction-of-arrival (DOA), power, and achievable degrees-of-freedom (DOFs) are fundamental parameters for source estimation. In this paper, we propose a novel sparse reconstruction-based source estimation algorithm by using a coprime array. Specifically, a difference coarray is derived from a coprime array as the foundation for increasing the number of DOFs, and a virtual uniform linear subarray covariance matrix sparse reconstruction-based optimization problem is formulated for DOA estimation. Meanwhile, a modified sliding window scheme is devised to remove the spurious peaks from the reconstructed sparse spatial spectrum, and the power estimation is enhanced through a least squares problem. Simulation results demonstrate the effectiveness of the proposed algorithm in terms of DOA estimation and power estimation as well as the achievable DOFs.
机译:到达方向(DOA),功率和可达到的自由度(DOF)是源估计的基本参数。在本文中,我们提出了一种新的基于稀疏重构的源估计算法。具体来说,从协素数组中导出差分协数组作为增加DOF数​​量的基础,并针对DOA估计制定了基于虚拟均匀线性子数组协方差矩阵稀疏重构的优化问题。同时,设计了一种改进的滑动窗口方案以从重构的稀疏空间频谱中去除伪峰,并且通过最小二乘问题来增强功率估计。仿真结果证明了该算法在DOA估计和功率估计以及可达到的DOF方面的有效性。

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