A General Compressive Sensing Construct using Density Evolution
Abstract
This paper proposes a general framework to design a sparse sensing matrix , in a linear measurement system , where , , and denote the measurements, the signal with certain structures, and the measurement noise, respectively. By viewing the signal reconstruction from the measurements as a message passing algorithm over a graphical model, we leverage tools from coding theory in the design of low density parity check codes, namely the density evolution, and provide a framework for the design of matrix . Particularly, compared to the previous methods, our proposed framework enjoys the following desirable properties: () Universality: the design supports both regular sensing and preferential sensing, and incorporates them in a single framework; () Flexibility: the framework can easily adapt the design of to a signal with different underlying structures. As an illustration, we consider the regularizer, which correspond to Lasso, for both the regular sensing and preferential sensing scheme. Noteworthy, our framework can reproduce the classical result of Lasso, i.e., (the regular sensing) with regular design after proper distribution approximation, where is some fixed constant. We also provide numerical experiments to confirm the analytical results and demonstrate the superiority of our framework whenever a preferential treatment of a sub-block of vector is required.
Cite
@article{arxiv.2204.04963,
title = {A General Compressive Sensing Construct using Density Evolution},
author = {Hang Zhang and Afshin Abdi and Faramarz Fekri},
journal= {arXiv preprint arXiv:2204.04963},
year = {2022}
}