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首页> 外文期刊>International journal of antennas and propagation >DOA Estimation for a Mixture of Uncorrelated and Coherent Sources Based on Hierarchical Sparse Bayesian Inference with a Gauss-Exp-Chi2 Prior
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DOA Estimation for a Mixture of Uncorrelated and Coherent Sources Based on Hierarchical Sparse Bayesian Inference with a Gauss-Exp-Chi2 Prior

机译:基于高斯-Exp-Chi2先验的分层稀疏贝叶斯推断的不相关源和相干源混合的DOA估计

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摘要

Direction of arrival (DOA) estimation algorithms based on sparse Bayesian inference (SBI) can effectively estimate coherent sources without recurring to extra decorrelation techniques, and their estimation performance is highly dependent on the selection of sparse prior. Specifically, the specified sparse prior is expected to concentrate its mass on the zero and distribute with heavy tails; otherwise, these algorithms may suffer from performance degradation. In this paper, we introduce a new sparse-encouraging prior, referred to as “Gauss-Exp-Chi2” prior, and develop an efficient DOA estimation algorithm for a mixture of uncorrelated and coherent sources under a hierarchical SBI framework. The Gauss-Exp-Chi2 prior distribution exhibits a sharp peak at the origin and heavy tails, and this property makes it an appropriate prior to encourage sparse solutions. A three-layer hierarchical sparse Bayesian model is established. Then, by exploiting variational Bayesian approximation, the model parameters are estimated by alternately updating until Kullback-Leibler (KL) divergence between the true posterior and the variational approximation becomes zero. By constructing the source power spectra with the estimated model parameters, the number and locations of the highest peaks are extracted to obtain source number and DOA estimates. In addition, some implementation details for algorithm optimization are discussed and the Cramér-Rao bound (CRB) of DOA estimation is derived. Simulation results demonstrate the effectiveness and favorable performance of the proposed algorithm as compared with the state-of-the-art sparse Bayesian algorithms.
机译:基于稀疏贝叶斯推理(SBI)的到达方向(DOA)估计算法可以有效地估计相干源,而无需使用额外的去相关技术,并且它们的估计性能高度依赖于稀疏先验的选择。具体而言,预期特定的稀疏先验将其质量集中在零上,并以重尾分布。否则,这些算法可能会导致性能下降。在本文中,我们介绍了一种新的稀疏激励先验,称为“ Gauss-Exp-Chi2”先验,并在分层SBI框架下针对不相关和相干源混合的情况开发了一种有效的DOA估计算法。 Gauss-Exp-Chi2先验分布在起点和尾巴很重时显示一个尖峰,并且此属性使其适合于鼓励稀疏解。建立了三层层次的稀疏贝叶斯模型。然后,通过利用变分贝叶斯近似,通过交替更新直到真实后验和变分近似之间的Kullback-Leibler(KL)散度变为零,来估计模型参数。通过使用估计的模型参数构建源功率谱,提取最高峰的数量和位置以获得源数量和DOA估计。此外,讨论了一些算法优化的实现细节,并推导了DOA估计的Cramér-Rao界(CRB)。仿真结果表明,与最新的稀疏贝叶斯算法相比,该算法的有效性和良好的性能。

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