IET Signal Processing (Jul 2022)

Modified complex multitask Bayesian compressive sensing using Laplacian scale mixture prior

  • Qilei Zhang,
  • Lei Yu,
  • Feng He,
  • Yifei Ji

DOI
https://doi.org/10.1049/sil2.12134
Journal volume & issue
Vol. 16, no. 5
pp. 601 – 614

Abstract

Read online

Abstract Bayesian compressive sensing (BCS) is an important sub‐class of sparse signal reconstruction algorithms. In this paper, a modified complex multitask Bayesian compressive sensing (MCMBCS) algorithm using the Laplacian scale mixture (LSM) prior is proposed. The LSM prior is first introduced into the complex BCS framework by exploiting its better sparse characteristic and flexibility than traditional Laplacian prior. Furthermore, by integrating out the noise variance analytically, the MCMBCS algorithm significantly improves the signal recovery performance than the original CMBCS. More importantly, the authors not only present the iterative algorithm but also develop the sub‐optimal fast implementation method based on the marginal likelihood maximisation, which dramatically reduce the computational complexity. Finally, sufficient numerical simulations validate the better performance of the proposed algorithm in reconstruction accuracy and computational effectiveness than existing work. It is revealed that the proposed algorithm has great potential in the complex‐valued signal processing field.

Keywords