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Partial Angular Sparse Representation Based DOA Estimation Using Sparse Separate Nested Acoustic Vector Sensor Array

机译:基于稀疏单独嵌套声矢量传感器阵列的基于DOA估计的部分角稀疏表示

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摘要

In this paper, the issue of direction of arrival (DOA) estimation is discussed, and a partial angular sparse representation (SR)-based method using a sparse separate nested acoustic vector sensor (SSN-AVS) array is developed. Traditional AVS array is improved by separating the pressure sensor array and velocity sensor array into two different sparse array geometries with nested relationship. This improved array geometry can achieve large degrees of freedom (DOF) after the extended vectorization of the cross-covariance matrix, and only partial SR of the angle is required by exploiting the cyclic phase ambiguity caused by the large inter-element spacing of the virtual array. Joint sparse recovery is developed to amend the grid offset and unitary transformation is utilized to transform the complex atoms into real-valued ones. After sparse recovery, the sparse vector can simultaneously provide high-resolution but ambiguous angle estimation and unambiguous reference angle estimation embedded in the AVS array, and they are combined to obtain unique and high-resolution DOA estimation. Compared to other state-of-the-art DOA estimation methods using the AVS array, the proposed algorithm can provide better DOA estimation performance while requiring lower complexity. Multiple simulation results verify the effectiveness of the approach.
机译:在本文中,到达(DOA)估计的方向的问题进行了讨论,并使用稀疏单独嵌套矢量传感器的局部角稀疏表示(SR)系方法(SSN-AVS)阵列被显影。传统AVS阵列由传感器阵列和速度传感器阵列的压力分离成嵌套关系的两个不同的稀疏阵列的几何形状的改善。这种改进的阵列几何形状可以互协方差矩阵的扩展矢量后实现大的自由度(DOF)的,并且通过利用所引起的虚拟的大元件间的间距的环状相位模糊所需要的角度的唯一的局部SR大批。关节稀疏恢复被显影以修改网格偏移和酉变换被用于复杂的原子转化为实值的。稀疏恢复后,将稀疏向量可同时提供高的分辨率,但不明确的角度估计和明确的参考角度估计嵌入AVS阵列中,并且它们被组合以获得独特和高分辨率DOA估计。相比于使用AVS阵列其他国家的最先进的DOA估计方法,而要求较低的复杂性,该算法能提供更好的DOA估计性能。多个仿真结果验证了该方法的有效性。

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