Correlated Sparse Bayesian Learning for Recovery of Block Sparse Signals With Unknown Borders

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Didem Dogan;Geert Leus
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引用次数: 0

Abstract

We consider the problem of recovering complex-valued block sparse signals with unknown borders. Such signals arise naturally in numerous applications. Several algorithms have been developed to solve the problem of unknown block partitions. In pattern-coupled sparse Bayesian learning (PCSBL), each coefficient involves its own hyperparameter and those of its immediate neighbors to exploit the block sparsity. Extended block sparse Bayesian learning (EBSBL) assumes the block sparse signal consists of correlated and overlapping blocks to enforce block correlations. We propose a simpler alternative to EBSBL and reveal the underlying relationship between the proposed method and a particular case of EBSBL. The proposed algorithm uses the fact that immediate neighboring sparse coefficients are correlated. The proposed model is similar to classical sparse Bayesian learning (SBL). However, unlike the diagonal correlation matrix in conventional SBL, the unknown correlation matrix has a tridiagonal structure to capture the correlation with neighbors. Due to the entanglement of the elements in the inverse tridiagonal matrix, instead of a direct closed-form solution, an approximate solution is proposed. The alternative algorithm avoids the high dictionary coherence in EBSBL, reduces the unknowns of EBSBL, and is computationally more efficient. The sparse reconstruction performance of the algorithm is evaluated with both correlated and uncorrelated block sparse coefficients. Simulation results demonstrate that the proposed algorithm outperforms PCSBL and correlation-based methods such as EBSBL in terms of reconstruction quality. The numerical results also show that the proposed correlated SBL algorithm can deal with isolated zeros and nonzeros as well as block sparse patterns.
相关稀疏贝叶斯学习用于恢复边界未知的块状稀疏信号
我们考虑的问题是恢复边界未知的复值块稀疏信号。这种信号在许多应用中都会自然出现。目前已开发出多种算法来解决未知块分区的问题。在模式耦合稀疏贝叶斯学习(PCSBL)中,每个系数都涉及其自身及其近邻的超参数,以利用块稀疏性。扩展块稀疏贝叶斯学习(EBSBL)假定块稀疏信号由相关和重叠的块组成,以加强块相关性。我们提出了一种比 EBSBL 更简单的替代方法,并揭示了所提方法与 EBSBL 特定情况之间的内在联系。我们提出的算法利用了紧邻稀疏系数是相关的这一事实。所提出的模型类似于经典的稀疏贝叶斯学习(SBL)。不过,与传统 SBL 中的对角相关矩阵不同,未知相关矩阵具有三对角结构,可以捕捉到与邻域的相关性。由于逆三对角矩阵中的元素存在纠缠,因此提出了一种近似解法,而不是直接的闭式解法。这种替代算法避免了 EBSBL 中的高字典相干性,减少了 EBSBL 的未知数,计算效率更高。该算法的稀疏重建性能通过相关和不相关的块稀疏系数进行了评估。仿真结果表明,就重建质量而言,所提出的算法优于 PCSBL 和基于相关性的方法(如 EBSBL)。数值结果还表明,所提出的相关 SBL 算法可以处理孤立零点和非零点以及块稀疏模式。
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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