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Robust Direction-of-Arrival Estimation via Sparse Representation and Deep Residual Convolutional Network for Co-Prime Arrays

机译:通过稀疏表示和共同阵列的深度剩余卷积网络稳健的到达方向估计

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Co-prime arrays can achieve higher degrees-of-freedom (DOF) with far fewer sensors. State-of-the-art mod-el-driven DOA estimation methods for co-prime arrays face challenges in practical applications because of pre-assumption dependencies. In this paper, we propose a spatial spectrum recovery method based on deep residual convolutional network (DRCN) for effective DOA estimation with a co-prime array. First, a pseudo spectrum is constructed via the observation vector and the extended array manifold matrix of the virtual array. Then, a deep learning framework with residual blocks is proposed to directly learn the mapping from the pseudo spectrum to the super resolution spectrum. The learning-based method enhances the generalization of untrained scenarios and robustness to non-ideal conditions, e.g., small angle separations, small snapshots, low SNRs and imperfect arrays, which makes up for the defects of previous model-driven methods. Simulations are carried out to validate the superior performance of the proposed method, particularly when the deviation of the array manifold matrix is significant.
机译:互质的阵列可以用少得多的传感器实现更高程度的自由度(DOF)。对于互质数,阵列国家的最先进的MOD-EL驱动DOA估计方法面对,因为前期的假设依赖实际应用的挑战。在本文中,我们提出了一种基于深残余卷积网络(DRCN),用于与互质阵列有效DOA估计的空间频谱恢复的方法。首先,伪光谱经由观测向量和虚拟阵列的扩展阵列歧管矩阵构成。然后,与残余块深刻的学习框架,提出了直接借鉴伪谱映射到超分辨率光谱。所述基于学习的方法增强的未经训练的场景和鲁棒性的非理想条件下,例如,小角的分离,小快照,低SNR和不完善阵列泛化,这弥补了以前的模型驱动方法的缺陷。仿真执行验证所提出的方法的优越性能,特别是当阵列歧管矩阵的偏差是显著。

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