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Deterministic and Bayesian Sparse Signal Processing Algorithms for Coherent Multipath Directions-of-Arrival (DOAs) Estimation

机译:确定性和贝叶斯稀疏信号处理算法用于相干多径到达方向(DOA)估计

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摘要

In this paper, we propose novel deterministic and Bayesian methods to identify the directions-of-arrival (DOAs) of coherent multipath signals assuming that a very few number of multipath signals are present and multiple snapshots are available. For both types of methods, we exploit both sparsity and the underlying structure of coherent signal propagation. For the deterministic case, we formulate the problem of estimating the DOAs of coherent multipath signals as a biconvex optimization problem and then solve it by an alternating convex search approach. This is in contrast to the widely used sparse signal recovery convex optimization problem, which only exploits sparsity of the signal under consideration. For the Bayesian case, we propose two novel algorithms based on the mean field variational Bayesian expectation maximization approach. The first algorithm assumes that the true scenario DOAs of the multipath signals are exactly aligned with the angular grids. We next extend the on-grid model to deal with the off-grid problem, which is the second proposed Bayesian algorithm of this paper. These two Bayesian algorithms are in contrast to the widely used sparse Bayesian learning relevance vector machine algorithm, which only exploits sparsity in spatial domain. A simulation study is carried out in terms of root-mean-squared error in the DOA estimates to compare the performances of different algorithms. Finally, we demonstrate the application of the proposed off-grid Bayesian algorithm by analyzing data from the shallow water HF97 ocean acoustic experiment.
机译:在本文中,我们提出了新颖的确定性和贝叶斯方法来确定相干多径信号的到达方向(DOA),前提是存在很少数量的多径信号并且可以使用多个快照。对于这两种方法,我们都利用稀疏性和相干信号传播的基础结构。对于确定性情况,我们将估计相干多径信号的DOA的问题公式化为双凸优化问题,然后通过交替凸搜索方法解决。这与广泛使用的稀疏信号恢复凸优化问题相反,后者仅利用了所考虑信号的稀疏性。对于贝叶斯情况,我们提出了两种基于平均场变贝叶斯期望最大化方法的新颖算法。第一种算法假设多径信号的真实场景DOA与角度网格完全对齐。接下来,我们扩展网格模型来处理离网问题,这是本文第二种提出的贝叶斯算法。这两种贝叶斯算法与广泛使用的稀疏贝叶斯学习相关性矢量机算法相反,后者仅利用空间域的稀疏性。针对DOA估计中的均方根误差进行了仿真研究,以比较不同算法的性能。最后,我们通过分析浅水HF97海洋声学实验中的数据,论证了提出的离网贝叶斯算法的应用。

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