Non-linear Bayesian image modelling

Christopher M. Bishop, John M. Winn

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

In recent years several techniques have been proposed for modelling the low-dimensional manifolds, or ‘subspaces’, of natural images. Examples include principal component analysis (as used for instance in ‘eigenfaces’), independent component analysis, and auto-encoder neural networks. Such methods suffer from a number of restrictions such as the limitation to linear manifolds or the absence of a probablistic representation. In this paper we exploit recent developments in the fields of variational inference and latent variable models to develop a novel and tractable probabilistic approach to modelling manifolds which can handle complex non-linearities. Our framework comprises a mixture of sub-space components in which both the number of components and the effective dimensionality of the sub-spaces are determined automatically as part of the Bayesian inference procedure. We illustrate our approach using two classical problems: modelling the manifold of face images and modelling the manifolds of hand-written digits
Original languageEnglish
Title of host publicationComputer Vision - ECCV 2000
Subtitle of host publication6th European Conference on Computer Vision Dublin, Ireland, June 26 – July 1, 2000 Proceedings, Part I
PublisherSpringer
Pages3-17
Number of pages15
ISBN (Electronic)978-3-540-45054-2
ISBN (Print)978-3-540-67685-0
DOIs
Publication statusPublished - 2000

Publication series

NameLecture Notes in Computer Science
PublisherSpringer Berlin Heidelberg
Volume1842
ISSN (Print)0302-9743

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