Learning sparse structures for physics-inspired compressed sensing

11/25/2020
by   Clément Dorffer, et al.
0

In underwater acoustics, shallow water environments act as modal dispersive waveguides when considering low-frequency sources. In this context, propagating signals can be described as a sum of few modal components, each of them propagating according to its own wavenumber. Estimating these wavenumbers is of key interest to understand the propagating environment as well as the emitting source. To solve this problem, we proposed recently a Bayesian approach exploiting a sparsity-inforcing prior. When dealing with broadband sources, this model can be further improved by integrating the particular dependence linking the wavenumbers from one frequency to the other. In this contribution, we propose to resort to a new approach relying on a restricted Boltzmann machine, exploited as a generic structured sparsity-inforcing model. This model, derived from deep Bayesian networks, can indeed be efficiently learned on physically realistic simulated data using well-known and proven algorithms.

READ FULL TEXT
research
06/13/2016

Inferring Sparsity: Compressed Sensing using Generalized Restricted Boltzmann Machines

In this work, we consider compressed sensing reconstruction from M measu...
research
03/07/2019

Stronger L2/L2 Compressed Sensing; Without Iterating

We consider the extensively studied problem of ℓ_2/ℓ_2 compressed sensin...
research
07/28/2023

Automated approach for source location in shallow waters

This paper proposes a fully automated method for recovering the location...
research
07/29/2020

Multi-Scale Factorization of the Wave Equation with Application to Compressed Sensing Photoacoustic Tomography

By performing a large number of spatial measurements, high spatial resol...
research
09/30/2016

On Identification of Sparse Multivariable ARX Model: A Sparse Bayesian Learning Approach

This paper begins with considering the identification of sparse linear t...

Please sign up or login with your details

Forgot password? Click here to reset