Bayesian Compressed Sensing with Heterogeneous Side Information
 
Bayesian Compressed Sensing with Heterogeneous Side Information 
 
Evangelos Zimos, João Mota, Miguel Rodrigues, Nikos Deligiannis
 
Abstract 

The classical compressed sensing (CS) paradigm can be modi ed so as to leverage a signal correlated to the signal of interest, called side information, which is assumed to be provided a priori at the decoder in order to aid reconstruction. In this work, we propose a novel CS reconstruction method based on belief propagation principles, which manages to exploit side information generated from a diverse (or heterogeneous) data source by using the statistical model of copula functions. Through simulations, we demonstrate that the proposed method yields significant reduction in the mean-squared error of the reconstructed signal as compared to state-of-the-art methods in classical compressed sensing and compressed sensing with side information.