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Modelling nonlinear dependencies in the latent space of inverse scattering

Modelling nonlinear dependencies in the latent space of inverse scattering
Modelling nonlinear dependencies in the latent space of inverse scattering
The problem of inverse scattering proposed by Angles and Mallat in 2018, concerns training a deep neural network to invert the scattering transform applied to an image. After such a network is trained, it can be used as a generative model given that we can sample from the distribution of principal components of scattering coefficients. For this purpose, Angles and Mallat simply use samples from independent Gaussians. However, as shown in this paper, the distribution of interest can actually be very far from normal and non-negligible dependencies might exist between different coefficients. This motivates using models for this distribution that allow for non-linear dependencies between variables. Within this paper, two such models are explored, namely a Variational AutoEncoder and a Generative Adversarial Network. We demonstrate the results obtained can be extremely realistic on some datasets and look better than those produced by Angles and Mallat. The conducted meta-analysis also shows a clear practical advantage of such constructed generative models in terms of the efficiency of their training process compared to existing generative models for images.
cs.CV
Ziomek, Juliusz
b05e7f21-70db-497c-be74-b0b54d2a4579
Farrahi, Katayoun
bc848b9c-fc32-475c-b241-f6ade8babacb
Ziomek, Juliusz
b05e7f21-70db-497c-be74-b0b54d2a4579
Farrahi, Katayoun
bc848b9c-fc32-475c-b241-f6ade8babacb

Ziomek, Juliusz and Farrahi, Katayoun (2022) Modelling nonlinear dependencies in the latent space of inverse scattering 8pp. (doi:10.48550/arXiv.2203.10307).

Record type: Monograph (Working Paper)

Abstract

The problem of inverse scattering proposed by Angles and Mallat in 2018, concerns training a deep neural network to invert the scattering transform applied to an image. After such a network is trained, it can be used as a generative model given that we can sample from the distribution of principal components of scattering coefficients. For this purpose, Angles and Mallat simply use samples from independent Gaussians. However, as shown in this paper, the distribution of interest can actually be very far from normal and non-negligible dependencies might exist between different coefficients. This motivates using models for this distribution that allow for non-linear dependencies between variables. Within this paper, two such models are explored, namely a Variational AutoEncoder and a Generative Adversarial Network. We demonstrate the results obtained can be extremely realistic on some datasets and look better than those produced by Angles and Mallat. The conducted meta-analysis also shows a clear practical advantage of such constructed generative models in terms of the efficiency of their training process compared to existing generative models for images.

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2203.10307v1 - Author's Original
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Published date: 19 March 2022
Keywords: cs.CV

Identifiers

Local EPrints ID: 469133
URI: http://eprints.soton.ac.uk/id/eprint/469133
PURE UUID: 421218a3-297e-4cee-b286-eacc7facfdf9
ORCID for Katayoun Farrahi: ORCID iD orcid.org/0000-0001-6775-127X

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Date deposited: 07 Sep 2022 17:10
Last modified: 17 Mar 2024 03:47

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Contributors

Author: Juliusz Ziomek
Author: Katayoun Farrahi ORCID iD

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