Compressed sensing with l0-norm: statistical physics analysis and algorithms for signal recovery

04/24/2023
by   D. Barbier, et al.
0

Noiseless compressive sensing is a protocol that enables undersampling and later recovery of a signal without loss of information. This compression is possible because the signal is usually sufficiently sparse in a given basis. Currently, the algorithm offering the best tradeoff between compression rate, robustness, and speed for compressive sensing is the LASSO (l1-norm bias) algorithm. However, many studies have pointed out the possibility that the implementation of lp-norms biases, with p smaller than one, could give better performance while sacrificing convexity. In this work, we focus specifically on the extreme case of the l0-based reconstruction, a task that is complicated by the discontinuity of the loss. In the first part of the paper, we describe via statistical physics methods, and in particular the replica method, how the solutions to this optimization problem are arranged in a clustered structure. We observe two distinct regimes: one at low compression rate where the signal can be recovered exactly, and one at high compression rate where the signal cannot be recovered accurately. In the second part, we present two message-passing algorithms based on our first results for the l0-norm optimization problem. The proposed algorithms are able to recover the signal at compression rates higher than the ones achieved by LASSO while being computationally efficient.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/10/2018

Snapshot compressed sensing: performance bounds and algorithms

Snapshot compressed sensing (CS) refers to compressive imaging systems w...
research
01/29/2013

Quadratic Basis Pursuit

In many compressive sensing problems today, the relationship between the...
research
12/02/2019

DeepFPC: Deep Unfolding of a Fixed-Point Continuation Algorithm for Sparse Signal Recovery from Quantized Measurements

We present DeepFPC, a novel deep neural network designed by unfolding th...
research
02/14/2018

Compressive Sensing with Low Precision Data Representation: Radio Astronomy and Beyond

Modern scientific instruments produce vast amounts of data, which can ov...
research
12/08/2017

Compressive Phase Retrieval of Structured Signal

Compressive phase retrieval is the problem of recovering a structured ve...
research
05/22/2014

Compressive Mining: Fast and Optimal Data Mining in the Compressed Domain

Real-world data typically contain repeated and periodic patterns. This s...
research
12/19/2022

Analysis of Sparse Recovery Algorithms via the Replica Method

This manuscript goes through the fundamental connections between statist...

Please sign up or login with your details

Forgot password? Click here to reset