Title
Model based Bayesian compressive sensing via Local Beta Process
Abstract
In the framework of Compressive Sensing (CS), the inherent structures underlying sparsity patterns can be exploited to promote the reconstruction accuracy and robustness. And this consideration results in a new extension for CS, called model based CS. In this paper, we propose a general statistical framework for model based CS, where both sparsity and structure priors are considered simultaneously. By exploiting the Latent Variable Analysis (LVA), a sparse signal is split into weight variables representing values of elements and latent variables indicating labels of elements. Then the Gamma-Gaussian model is exploited to describe weight variables to induce sparsity, while the beta process is assumed on each of the local clusters to describe inherent structures. Since the complete model is an extension of Bayesian CS and the process is for local properties, it is called Model based Bayesian CS via Local Beta Process (MBCS-LBP). Moreover, the beta process is a Bayesian conjugate prior to the Bernoulli Process, as well as the Gamma to Gaussian distribution, thus it allows for an analytical posterior inference through a variational Bayes inference algorithm and hence leads to a deterministic VB-EM iterative algorithm. HighlightsThis paper is dealing with the recovery problem for model based compressive sensing.This paper has proposed a hierarchical Bayesian model to describe the model based compressive sensing.Local Beta Process has been applied to describe the inherent structures of the sparse signals.Variational Bayesian approach has been exploited to implement the Bayesian inference.
Year
DOI
Venue
2015
10.1016/j.sigpro.2014.09.018
Signal Processing
Keywords
Field
DocType
compressive sensing
Bayesian inference,Bayesian linear regression,Artificial intelligence,Compressed sensing,Bayes' theorem,Mathematical optimization,Inference,Algorithm,Prior probability,Conjugate prior,Mathematics,Machine learning,Bayesian probability
Journal
Volume
Issue
ISSN
108
C
0165-1684
Citations 
PageRank 
References 
15
0.63
29
Authors
4
Name
Order
Citations
PageRank
Lei Yu15013.27
Hong Sun221826.36
Gang Zheng310919.51
Jean Pierre Barbot4211.87