Title of article
Model Selection for Unsupervised Learning of Visual Context
Author/Authors
TAO XIANG AND SHAOGANG GONG، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
21
From page
181
To page
201
Abstract
This study addresses the problem of choosing the most suitable probabilistic model selection criterion for
unsupervised learning of visual context of a dynamic scene using mixture models. A rectified Bayesian Information
Criterion (BICr) and a Completed Likelihood Akaike’s Information Criterion (CL-AIC) are formulated to estimate
the optimal model order (complexity) for a given visual scene. Both criteria are designed to overcome poor model
selection by existing popular criteria when the data sample size varies from small to large and the true mixture
distribution kernel functions differ from the assumed ones. Extensive experiments on learning visual context for
dynamic scene modelling are carried out to demonstrate the effectiveness of BICr and CL-AIC, compared to that
of existing popular model selection criteria including BIC, AIC and Integrated Completed Likelihood (ICL). Our
study suggests that for learning visual context using a mixture model, BICr is the most appropriate criterion given
sparse data, while CL-AIC should be chosen given moderate or large data sample sizes.
Keywords
learning for vision , Visual context , Model selection , Clustering , Dynamic scene modelling , Bayesianmethods , mixture models
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Serial Year
2006
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Record number
828212
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