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Sparse Bayesian DOA Estimation Using Hierarchical Synthesis Lasso Priors for Off-Grid Signals

机译:离网信号的分层综合套索先验稀疏贝叶斯DOA估计

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Within the conventional sparse Bayesian learning (SBL) framework, only Gaussian scale mixtures have been adopted to model sparsity-inducing priors that guarantee the exact inverse recovery. In light of the relative scarcity of formal SBL tools in enforcing a proper sparsity profile of signal vectors, we explore the use of hierarchical synthesis lasso (HSL) priors for representing the same small subset of features among multiple responses. We outline a viable approximation to this particular choice of sparse prior, leading to tractable marginalization over all weights and hyperparameters. We then discuss how the statistical variables of the hierarchical Bayesian model can be estimated via an adaptive updating formula, and include a refined one dimensional searching procedure to extraordinarily improve the direction of arrival (DOA) estimation performance when take the off-grid DOAs into account. Using these modifications, we show that exploiting HSL priors are very helpful in encouraging sparseness. Numerical simulations also verify the superiority of the proposal in terms of convergence speed and root mean squared estimation error, as compared to the traditional and more recent sparse Bayesian algorithms.
机译:在常规的稀疏贝叶斯学习(SBL)框架内,仅采用高斯尺度混合来建模稀疏性先验模型,以确保精确的逆恢复。鉴于正式的SBL工具在执行信号向量的适当稀疏度配置文件方面相对稀缺,我们探索了使用层次综合套索(HSL)先验来表示多个响应中相同的小特征子集。我们概述了这种稀疏先验的特定选择的可行近似,从而导致所有权重和超参数的可处理边缘化。然后,我们讨论如何通过自适应更新公式来估计分层贝叶斯模型的统计变量,并包括精炼的一维搜索过程,以在考虑离网DOA时特别提高到达方向(DOA)估计性能。使用这些修改,我们表明利用HSL先验对鼓励稀疏性非常有帮助。与传统的和较新的稀疏贝叶斯算法相比,数值模拟还证明了该方案在收敛速度和均方根估计误差方面的优越性。

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