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Sparse Bayesian Learning for DOA Estimation Using Co-Prime and Nested Arrays

机译:使用辅助素数和嵌套数组的DOA估计的稀疏贝叶斯学习

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Sparse Bayesian learning (SBL) has been used to obtain source direction-of-arrivals (DoAs) from uniform linear array (ULA) data. The maximum number of sources that can be resolved using a ULA is limited by the number of sensors in the array. It is known that sparse linear arrays such as co-prime and nested arrays can resolve more sources than the number of sensors. In this paper we demonstrate this using SBL. We compute the mean squared error in source power estimation as various parameters are varied.
机译:稀疏贝叶斯学习(SBL)已用于从均匀线性阵列(ULA)数据获得源到达方向(DoAs)。使用ULA可以解析的最大光源数量受阵列中传感器数量的限制。众所周知,稀疏线性数组(例如,互质数和嵌套数组)可以解析比传感器数量更多的源。在本文中,我们使用SBL对此进行了演示。随着各种参数的变化,我们在源功率估计中计算均方误差。

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