Wideband DOA estimation via low rank and denoising covariance matrix reconstruction

Juan Shi, Lihuan Huang, Weidong Wang, Quanhe Chen, Xuan Shi
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引用次数: 1

Abstract

1In wideband array signal processing, most existing direction of arrival (DOA) estimation methods have poor performance with finite snapshots. Aiming at this problem, this paper proposes a novel DOA estimation method for wideband signal sources using denoising covariance matrix reconstruction based on Toeplitz structure presented, followed by the low rank and denoising MUSIC method. Specifically, the wideband signal covariance matrix with finite snapshots is directly modeled as the sum of the covariance matrix of the signal sources and that of the noise according to the low rank recovery theory. Then, a convex model is established by weakening the noise subspace of the data sampling covariance matrix. Afterwords, a low rank and denoising Toeplitz covariance matrix is reconstructed via performing semidefinite programming (SDP) on the optimization target. Finally, the target angles are efficiently estimated by the improved MUSIC method. The numerical simulation results show that the improved wideband DOA (WDOA) estimation method solution outperforms the other two classical DOA estimation methods in the case of small angular separation and low signal to noise ratio(SNR).
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基于低秩去噪协方差矩阵重构的宽带DOA估计
在宽带阵列信号处理中,大多数现有的DOA估计方法在有限快照下性能较差。针对这一问题,本文提出了一种基于Toeplitz结构去噪协方差矩阵重构的宽带信号源DOA估计新方法,然后采用低秩去噪MUSIC方法。具体而言,根据低秩恢复理论,将有限快照的宽带信号协方差矩阵直接建模为信号源协方差矩阵与噪声协方差矩阵的和。然后,通过弱化数据采样协方差矩阵的噪声子空间,建立凸模型;然后,通过对优化目标进行半定规划(SDP),重构低秩去噪的Toeplitz协方差矩阵。最后,利用改进的MUSIC方法对目标角度进行了有效估计。数值仿真结果表明,改进的宽带DOA估计方法在小角分离和低信噪比的情况下优于其他两种经典的DOA估计方法。
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