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首页> 外文期刊>IEEE communications letters >Angle Separation Learning for Coherent DOA Estimation With Deep Sparse Prior
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Angle Separation Learning for Coherent DOA Estimation With Deep Sparse Prior

机译:角度分离学习,用于深稀稀的Chereent DoA估计

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摘要

In this letter, we propose two angle separation learning schemes (ASLs) to address the coherent DOA estimation problem. We first show that the columns of the array covariance matrix can be formulated as under-sampled linear measurements of the spatial spectrum. Secondly, the computational load of coherent DOA estimation contains two-dimensional searching process, which is reduced through introducing angle separation. Correspondingly, two classification learning models integrating the angle separation are proposed to solve the problem of coherent DOA estimation. Compared to classic sparsity-inducing methods with complex computational interactions, the proposed ASLs can efficiently obtain DOA estimates in near real time. Moreover, the proposed ASLs improve the DOA estimation performance compared to existing deep-learning based methods. Numerical experiments prove the effectiveness and superiority of the presented ASLs. Simulation results show that the new techniques have a better performance in term of estimation errors and generalization ability than the classic physics-driven and state-of-the-art deep-learning based DOA estimation methods, especially in demanding scenarios with low SNR and limited snapshots.
机译:在这封信中,我们提出了两个角度分离学习计划(ASL)来解决连贯的DOA估计问题。我们首先表明阵列协方差矩阵的列可以配制为空间谱的被置于采样的线性测量。其次,相干DOA估计的计算负荷包含二维搜索过程,这通过引入角度分离而减小。相应地,提出了整合角度分离的两个分类学习模型来解决连贯的DOA估计问题。与具有复杂计算相互作用的经典稀疏性诱导方法相比,所提出的ASL可以在近实时获得DOA估计。此外,与现有的基于深度学习的方法相比,所提出的ASL改善了DOA估计性能。数值实验证明了所呈现的ASL的有效性和优越性。仿真结果表明,新技术在估计误差和泛化能力方面具有比经典物理驱动和最先进的深学习的DOA估计方法更好,尤其是低SNR和Limited的苛刻场景快照。

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