Bayesian hypothesis testing for one bit compressed sensing with sensing matrix perturbation

11/18/2015
by   H. Zayyani, et al.
0

This letter proposes a low-computational Bayesian algorithm for noisy sparse recovery in the context of one bit compressed sensing with sensing matrix perturbation. The proposed algorithm which is called BHT-MLE comprises a sparse support detector and an amplitude estimator. The support detector utilizes Bayesian hypothesis test, while the amplitude estimator uses an ML estimator which is obtained by solving a convex optimization problem. Simulation results show that BHT-MLE algorithm offers more reconstruction accuracy than that of an ML estimator (MLE) at a low computational cost.

READ FULL TEXT

page 1

page 2

research
01/03/2016

Sparse Diffusion Steepest-Descent for One Bit Compressed Sensing in Wireless Sensor Networks

This letter proposes a sparse diffusion steepest-descent algorithm for o...
research
05/08/2018

Binary Sparse Bayesian Learning Algorithm for One-bit Compressed Sensing

In this letter, a binary sparse Bayesian learning (BSBL) algorithm is pr...
research
07/02/2016

Double-detector for Sparse Signal Detection from One Bit Compressed Sensing Measurements

This letter presents the sparse vector signal detection from one bit com...
research
09/14/2013

Optimized projections for compressed sensing via rank-constrained nearest correlation matrix

Optimizing the acquisition matrix is useful for compressed sensing of si...
research
08/22/2015

Bayesian Hypothesis Testing for Block Sparse Signal Recovery

This letter presents a novel Block Bayesian Hypothesis Testing Algorithm...
research
11/25/2017

Multivariate Copula Spatial Dependency in One Bit Compressed Sensing

In this letter, the problem of sparse signal reconstruction from one bit...
research
12/18/2018

Sparse mmWave OFDM Channel Estimation Using Compressed Sensing in OFDM Systems

This paper proposes and analyzes a mmWave sparse channel estimation tech...

Please sign up or login with your details

Forgot password? Click here to reset