Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind

In recent years, probabilistic models have become fundamental techniques in machine learning. They are successfully applied in various engineering problems, such as robotics, biometrics, brain-computer interfaces or artificial vision, and will gain in importance in the near future. This work deals w...

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Main Author: Archambeau, Cédric
Format: Others
Language:en
Published: Universite catholique de Louvain 2005
Subjects:
Online Access:http://edoc.bib.ucl.ac.be:81/ETD-db/collection/available/BelnUcetd-09212005-155034/
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topic Visual prosthesis
Nonparameteric density estimation
Optic nerve
Variational Bayes
Expectation-maximization
Bayesian learning
Finite mixture models
Rehabilitation
Geodesics
Manifold constrained models
Regularization networks
Probabilistic graphical models
Latent variable models
Robustness to noise
spellingShingle Visual prosthesis
Nonparameteric density estimation
Optic nerve
Variational Bayes
Expectation-maximization
Bayesian learning
Finite mixture models
Rehabilitation
Geodesics
Manifold constrained models
Regularization networks
Probabilistic graphical models
Latent variable models
Robustness to noise
Archambeau, Cédric
Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
description In recent years, probabilistic models have become fundamental techniques in machine learning. They are successfully applied in various engineering problems, such as robotics, biometrics, brain-computer interfaces or artificial vision, and will gain in importance in the near future. This work deals with the difficult, but common situation where the data is, either very noisy, or scarce compared to the complexity of the process to model. We focus on latent variable models, which can be formalized as probabilistic graphical models and learned by the expectation-maximization algorithm or its variants (e.g., variational Bayes).<br> After having carefully studied a non-exhaustive list of multivariate kernel density estimators, we established that in most applications locally adaptive estimators should be preferred. Unfortunately, these methods are usually sensitive to outliers and have often too many parameters to set. Therefore, we focus on finite mixture models, which do not suffer from these drawbacks provided some structural modifications.<br> Two questions are central in this dissertation: (i) how to make mixture models robust to noise, i.e. deal efficiently with outliers, and (ii) how to exploit side-channel information, i.e. additional information intrinsic to the data. In order to tackle the first question, we extent the training algorithms of the popular Gaussian mixture models to the Student-t mixture models. the Student-t distribution can be viewed as a heavy-tailed alternative to the Gaussian distribution, the robustness being tuned by an extra parameter, the degrees of freedom. Furthermore, we introduce a new variational Bayesian algorithm for learning Bayesian Student-t mixture models. This algorithm leads to very robust density estimators and clustering. To address the second question, we introduce manifold constrained mixture models. This new technique exploits the information that the data is living on a manifold of lower dimension than the dimension of the feature space. Taking the implicit geometrical data arrangement into account results in better generalization on unseen data.<br> Finally, we show that the latent variable framework used for learning mixture models can be extended to construct probabilistic regularization networks, such as the Relevance Vector Machines. Subsequently, we make use of these methods in the context of an optic nerve visual prosthesis to restore partial vision to blind people of whom the optic nerve is still functional. Although visual sensations can be induced electrically in the blind's visual field, the coding scheme of the visual information along the visual pathways is poorly known. Therefore, we use probabilistic models to link the stimulation parameters to the features of the visual perceptions. Both black-box and grey-box models are considered. The grey-box models take advantage of the known neurophysiological information and are more instructive to medical doctors and psychologists.<br>
author Archambeau, Cédric
author_facet Archambeau, Cédric
author_sort Archambeau, Cédric
title Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
title_short Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
title_full Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
title_fullStr Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
title_full_unstemmed Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
title_sort probabilistic models in noisy environments : and their application to a visual prosthesis for the blind
publisher Universite catholique de Louvain
publishDate 2005
url http://edoc.bib.ucl.ac.be:81/ETD-db/collection/available/BelnUcetd-09212005-155034/
work_keys_str_mv AT archambeaucedric probabilisticmodelsinnoisyenvironmentsandtheirapplicationtoavisualprosthesisfortheblind
_version_ 1716393730198470656
spelling ndltd-BICfB-oai-ucl.ac.be-ETDUCL-BelnUcetd-09212005-1550342013-01-07T15:41:29Z Probabilistic models in noisy environments : and their application to a visual prosthesis for the blind Archambeau, Cédric Visual prosthesis Nonparameteric density estimation Optic nerve Variational Bayes Expectation-maximization Bayesian learning Finite mixture models Rehabilitation Geodesics Manifold constrained models Regularization networks Probabilistic graphical models Latent variable models Robustness to noise In recent years, probabilistic models have become fundamental techniques in machine learning. They are successfully applied in various engineering problems, such as robotics, biometrics, brain-computer interfaces or artificial vision, and will gain in importance in the near future. This work deals with the difficult, but common situation where the data is, either very noisy, or scarce compared to the complexity of the process to model. We focus on latent variable models, which can be formalized as probabilistic graphical models and learned by the expectation-maximization algorithm or its variants (e.g., variational Bayes).<br> After having carefully studied a non-exhaustive list of multivariate kernel density estimators, we established that in most applications locally adaptive estimators should be preferred. Unfortunately, these methods are usually sensitive to outliers and have often too many parameters to set. Therefore, we focus on finite mixture models, which do not suffer from these drawbacks provided some structural modifications.<br> Two questions are central in this dissertation: (i) how to make mixture models robust to noise, i.e. deal efficiently with outliers, and (ii) how to exploit side-channel information, i.e. additional information intrinsic to the data. In order to tackle the first question, we extent the training algorithms of the popular Gaussian mixture models to the Student-t mixture models. the Student-t distribution can be viewed as a heavy-tailed alternative to the Gaussian distribution, the robustness being tuned by an extra parameter, the degrees of freedom. Furthermore, we introduce a new variational Bayesian algorithm for learning Bayesian Student-t mixture models. This algorithm leads to very robust density estimators and clustering. To address the second question, we introduce manifold constrained mixture models. This new technique exploits the information that the data is living on a manifold of lower dimension than the dimension of the feature space. Taking the implicit geometrical data arrangement into account results in better generalization on unseen data.<br> Finally, we show that the latent variable framework used for learning mixture models can be extended to construct probabilistic regularization networks, such as the Relevance Vector Machines. Subsequently, we make use of these methods in the context of an optic nerve visual prosthesis to restore partial vision to blind people of whom the optic nerve is still functional. Although visual sensations can be induced electrically in the blind's visual field, the coding scheme of the visual information along the visual pathways is poorly known. Therefore, we use probabilistic models to link the stimulation parameters to the features of the visual perceptions. Both black-box and grey-box models are considered. The grey-box models take advantage of the known neurophysiological information and are more instructive to medical doctors and psychologists.<br> Universite catholique de Louvain 2005-09-26 text application/pdf http://edoc.bib.ucl.ac.be:81/ETD-db/collection/available/BelnUcetd-09212005-155034/ http://edoc.bib.ucl.ac.be:81/ETD-db/collection/available/BelnUcetd-09212005-155034/ en unrestricted J'accepte que le texte de la thèse (ci-après l'oeuvre), sous réserve des parties couvertes par la confidentialité, soit publié dans le recueil électronique des thèses UCL. A cette fin, je donne licence à l'UCL : - le droit de fixer et de reproduire l'oeuvre sur support électronique : logiciel ETD/db - le droit de communiquer l'oeuvre au public Cette licence, gratuite et non exclusive, est valable pour toute la durée de la propriété littéraire et artistique, y compris ses éventuelles prolongations, et pour le monde entier. Je conserve tous les autres droits pour la reproduction et la communication de la thèse, ainsi que le droit de l'utiliser dans de futurs travaux. Je certifie avoir obtenu, conformément à la législation sur le droit d'auteur et aux exigences du droit à l'image, toutes les autorisations nécessaires à la reproduction dans ma thèse d'images, de textes, et/ou de toute oeuvre protégés par le droit d'auteur, et avoir obtenu les autorisations nécessaires à leur communication à des tiers. Au cas où un tiers est titulaire d'un droit de propriété intellectuelle sur tout ou partie de ma thèse, je certifie avoir obtenu son autorisation écrite pour l'exercice des droits mentionnés ci-dessus.