通过稀疏贝叶斯学习利用层次先验进行到达方向估计,复杂度低

Ninghui Li, Xiaokuan Zhang, Fan Lv, Binfeng Zong
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引用次数: 0

摘要

对于稀疏域中的到达方向(DOA)估计问题,稀疏贝叶斯学习(SBL)因其出色的估计性能而备受研究人员青睐。然而,传统的基于 SBL 的方法总是为待求解参数指定高斯先验,从而导致适度的稀疏信号恢复(SSR)效应。究其原因,高斯前验在稀疏性约束中起着类似于 l2 正则化的作用。因此,人们开发了许多采用层次先验的方法,这些方法的性能比高斯先验更好。然而,当采用多测量向量(MMV)数据时,这些方法就会陷入困境。在此基础上,我们开发了一种块稀疏 SBL 方法(命名为 BSBL)来处理 MMV 模型中的 DOA 估计问题。BSBL 的新颖之处在于将层次先验和源自 MMV 数据的块稀疏模型相结合。因此,一方面,BSBL 通过矢量化将 MMV 模型转换为块稀疏模型,从而直接进行贝叶斯学习,而无需考虑不同测量向量的先验独立假设以及矩阵形式求解带来的不便。另一方面,BSBL 继承了分层先验的优点,具有更好的 SSR 能力。尽管有这些优点,BSBL 仍然存在高维矩阵运算导致计算复杂度相对较大的缺点。有鉴于此,我们采用了两种低复杂度操作。一种是通过近似降低 BSBL 的矩阵维数,产生一种名为 BSBL-APPR 的方法;另一种是将广义近似信息传递(GAMB)技术嵌入 BSBL,从而将矩阵运算分解为矢量或比例运算,命名为 BSBL-GAMP。此外,BSBL 还能抑制时间相关性并轻松处理宽带信号源。大量仿真结果证明了 BSBL 优于其他先进算法。
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Direction-of-Arrival Estimation via Sparse Bayesian Learning Exploiting Hierarchical Priors with Low Complexity
For direction-of-arrival (DOA) estimation problems in a sparse domain, sparse Bayesian learning (SBL) is highly favored by researchers owing to its excellent estimation performance. However, traditional SBL-based methods always assign Gaussian priors to parameters to be solved, leading to moderate sparse signal recovery (SSR) effects. The reason is Gaussian priors play a similar role to l2 regularization in sparsity constraint. Therefore, numerous methods are developed by adopting hierarchical priors that are used to perform better than Gaussian priors. However, these methods are in straitened circumstances when multiple measurement vector (MMV) data are adopted. On this basis, a block-sparse SBL method (named BSBL) is developed to handle DOA estimation problems in MMV models. The novelty of BSBL is the combination of hierarchical priors and block-sparse model originating from MMV data. Therefore, on the one hand, BSBL transfers the MMV model to a block-sparse model by vectorization so that Bayesian learning is directly performed, regardless of the prior independent assumption of different measurement vectors and the inconvenience caused by the solution of matrix form. On the other hand, BSBL inherited the advantage of hierarchical priors for better SSR ability. Despite the benefit, BSBL still has the disadvantage of relatively large computation complexity caused by high dimensional matrix operations. In view of this, two operations are implemented for low complexity. One is reducing the matrix dimension of BSBL by approximation, generating a method named BSBL-APPR, and the other is embedding the generalized approximate message passing (GAMB) technique into BSBL so as to decompose matrix operations into vector or scale operations, named BSBL-GAMP. Moreover, BSBL is able to suppress temporal correlation and handle wideband sources easily. Extensive simulation results are presented to prove the superiority of BSBL over other state-of-the-art algorithms.
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