SPP-SBL: Space-Power Prior Sparse Bayesian Learning for Block Sparse Recovery
Zhang, Yanhao, Zhu, Zhihan, Xia, Yong
–arXiv.org Artificial Intelligence
--The recovery of block-sparse signals with unknown structural patterns remains a fundamental challenge in structured sparse signal reconstruction. By proposing a variance transformation framework, this paper unifies existing pattern-based block sparse Bayesian learning methods, and introduces a novel space power prior based on undirected graph models to adaptively capture the unknown patterns of block-sparse signals. By combining the EM algorithm with high-order equation root-solving, we develop a new structured sparse Bayesian learning method, SPP-SBL, which effectively addresses the open problem of space coupling parameter estimation in pattern-based methods. We further demonstrate that learning the relative values of space coupling parameters is key to capturing unknown block-sparse patterns and improving recovery accuracy. Experiments validate that SPP-SBL successfully recovers various challenging structured sparse signals (e.g., chain-structured signals and multi-pattern sparse signals) and real-world multi-modal structured sparse signals (images, audio), showing significant advantages in recovery accuracy across multiple metrics. Index T erms --Compressed sensing, Space-Power prior, block sparsity, sparse Bayesian learning, expectation-maximization. P ARSE recovery through Compressed Sensing (CS) has garnered significant attention due to its robust theoretical foundation and wide-ranging applications [1], particularly for its efficacy in reconstructing sparse vectors from a substantially reduced number of linear measurements.
arXiv.org Artificial Intelligence
May-14-2025