English

A General Compressive Sensing Construct using Density Evolution

Signal Processing 2022-04-12 v1

Abstract

This paper proposes a general framework to design a sparse sensing matrix \ensuremathARm×n\ensuremath{\mathbf{A}}\in \mathbb{R}^{m\times n}, in a linear measurement system \ensuremathy=\ensuremathAx+\ensuremathw\ensuremath{\mathbf{y}} = \ensuremath{\mathbf{Ax}}^{\natural} + \ensuremath{\mathbf{w}}, where \ensuremathyRm\ensuremath{\mathbf{y}} \in \mathbb{R}^m, \ensuremathx\RRn\ensuremath{\mathbf{x}}^{\natural}\in \RR^n, and \ensuremathw\ensuremath{\mathbf{w}} 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 \ensuremathA\ensuremath{\mathbf{A}}. Particularly, compared to the previous methods, our proposed framework enjoys the following desirable properties: (ii) Universality: the design supports both regular sensing and preferential sensing, and incorporates them in a single framework; (iiii) Flexibility: the framework can easily adapt the design of \bA\bA to a signal \ensuremathx\ensuremath{\mathbf{x}}^{\natural} with different underlying structures. As an illustration, we consider the 1\ell_1 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., mc0klog(n/k)m\geq c_0 k\log(n/k) (the regular sensing) with regular design after proper distribution approximation, where c0>0c_0 > 0 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 \bx\bx^{\natural} is required.

Keywords

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}
}
R2 v1 2026-06-24T10:44:13.709Z