Learning Direct and Inverse Transmission Matrices

01/15/2019
by   Daniele Ancora, et al.
0

Linear problems appear in a variety of disciplines and their application for the transmission matrix recovery is one of the most stimulating challenges in biomedical imaging. Its knowledge turns any random media into an optical tool that can focus or transmit an image through disorder. Here, converting an input-output problem into a statistical mechanical formulation, we investigate how inference protocols can learn the transmission couplings by pseudolikelihood maximization. Bridging linear regression and thermodynamics let us propose an innovative framework to pursue the solution of the scattering-riddle.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/13/2019

Transmission Matrix Inference via Pseudolikelihood Decimation

One of the biggest challenges in the field of biomedical imaging is the ...
research
07/28/2020

Light scattering control in transmission and reflection with neural networks

Scattering often limits the controlled delivery of light in applications...
research
12/15/2021

Invisibility enables super-visibility in electromagnetic imaging

This paper is concerned with the inverse electromagnetic scattering prob...
research
10/05/2015

Intensity-only optical compressive imaging using a multiply scattering material and a double phase retrieval approach

In this paper, the problem of compressive imaging is addressed using nat...
research
06/28/2018

Deep learning for dehazing: Comparison and analysis

We compare a recent dehazing method based on deep learning, Dehazenet, w...
research
07/18/2018

Deep learning the high variability and randomness inside multimode fibres

Multimode fibres (MMF) are remarkable high-capacity information channels...

Please sign up or login with your details

Forgot password? Click here to reset