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Improved DOA estimation with acoustic vector sensor arrays using spatial sparsity and subarray manifold

机译:使用空间稀疏度和子阵列流形的声矢量传感器阵列改进DOA估计

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The performance of DOA estimation with scalar sensor arrays using spatial sparse signal reconstruction (SSR) technique is affected by the grid spacing. In this paper, we formulate the DOA estimation with the acoustic vector sensor (AVS) arrays under SSR framework. A coarse-to-fine DOA estimation algorithm has been developed. The source spatial sparsity and the inter-relations among the manifold matrices of the AVS subarrays are jointly utilized to eliminate the grid effect in the SSR technique and the improvement of the overall DOA estimation performance is achieved at low complexity. Simulation results show that the proposed method effectively mitigates the DOA estimation bias caused by off-grid sources. Interestingly, our method gives good DOA estimation accuracy when sources are closely located.
机译:标量传感器阵列使用空间稀疏信号重构(SSR)技术进行DOA估计的性能受网格间距的影响。在本文中,我们在SSR框架下用声矢量传感器(AVS)阵列制定了DOA估计。已经开发了一种从粗到精的DOA估计算法。结合利用源空间稀疏性和AVS子阵列的流形矩阵之间的相互关系来消除SSR技术中的网格效应,并以低复杂度实现了整体DOA估计性能的提高。仿真结果表明,该方法有效缓解了离网源引起的DOA估计偏差。有趣的是,当源位置很近时,我们的方法可提供良好的DOA估计精度。

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