具有已知和未知边界的块稀疏信号恢复的改进贝叶斯学习算法

Neda Haghighatpanah, R. Gohary
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引用次数: 0

摘要

针对块稀疏信号,提出了两种新的贝叶斯学习恢复算法。考虑两种情况。在第一种情况下,每个块内的信号是相关的,并且块的边界是已知的。在第二种情况下,块边界是未知的,信号元素是不相关的。与现有算法不同的是,本文提出的算法从之前迭代估计的数据中获得最优的块协方差。此外,将区块声明为零的决定是基于假设检验的。对于第二种情况,我们引入了一种新的先验模型,该模型以相邻信号元素之间的弹性依赖为特征。利用该模型,我们开发了一种新的贝叶斯学习算法,该算法在估计信号元素之间的依赖关系和更新高斯先验模型之间迭代。数值仿真验证了所提算法的有效性。
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Improved Bayesian learning Algorithms for recovering Block Sparse Signals With Known and Unknown Borders
This paper presents two novel Bayesian learning recovery algorithms for block sparse signals. Two cases are considered. In the first case, the signals within each block are correlated and the block borders are known. In the second case, the block borders are unknown and the signal elements are uncorrelated. Unlike their existing counterparts, the proposed algorithms obtain the optimal block covariances from the data estimated in the previous iterations. Furthermore, the decision to declare a block as zero is based on hypothesis testing. For the second case, we introduce a new prior model which is characterized by elastic dependencies among neighbouring signal elements. Using this model, we develop a novel Bayesian learning algorithm which iterates between estimating the dependencies among the signal elements and updating the Gaussian prior model. Numerical simulations illustrate the effectiveness of the proposed algorithms.
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