DocumentCode
2171774
Title
An online learning algorithm for mixture models of deformable templates
Author
Maire, Frederic ; Lefebvre, Serge ; Douc, R. ; Moulines, Eric
Author_Institution
ONERA The French Aerosp. Lab., Palaiseau, France
fYear
2012
fDate
23-26 Sept. 2012
Firstpage
1
Lastpage
6
Abstract
The issue addressed in this paper is the unsupervised learning of observed shapes. More precisely, we are aiming at learning the main features of an object seen in different scenarios. We adapt the statistical framework from [1] to propose a model in which an object is described by independent classes representing its variability. Our work consists in proposing an algorithm which learns each class characteristics in a sequential way: each new observation will improve our object knowledge. This algorithm is particularly well suited to real time applications such as shape recognition or classification, but turns out to be a challenging problem. Indeed, the so-called classic machine learning algorithms in missing data problems such as the Expectation Maximization algorithm (EM) are not designed to learn from sequentially acquired observations. Moreover, the so-called hidden data simulation in a mixture model can not be achieved in a proper way using the classic Markov Chain Monte Carlo (MCMC) algorithms, such as the Gibbs sampler. Our proposal, among other, takes advantage from the contribution of Cappé and Moulines [2] for a sequential adaptation of the EM algorithm and from the work of Carlin and Chib [3] for the hidden data posterior distribution simulation.
Keywords
expectation-maximisation algorithm; image classification; shape recognition; unsupervised learning; EM algorithm; class characteristics; classic machine learning algorithm; deformable template; expectation maximization algorithm; hidden data posterior distribution simulation; missing data problem; mixture model; object knowledge; observed shape; online learning algorithm; shape classification; shape recognition; statistical framework; unsupervised learning; Adaptation models; Approximation methods; Data models; Deformable models; Machine learning algorithms; Shape; Signal processing algorithms; Carlin and Chib; clustering; online Expectation Maximization; statistical inference; variability modeling;
fLanguage
English
Publisher
ieee
Conference_Titel
Machine Learning for Signal Processing (MLSP), 2012 IEEE International Workshop on
Conference_Location
Santander
ISSN
1551-2541
Print_ISBN
978-1-4673-1024-6
Electronic_ISBN
1551-2541
Type
conf
DOI
10.1109/MLSP.2012.6349725
Filename
6349725
Link To Document