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Construction of Bayesian deformable models via a stochastic approximation algorithm: A convergence study
by
ALLASSONNIÈRE, STÉPHANIE
, KUHN, ESTELLE
, TROUVÉ, ALAIN
in
Approximation
/ Approximation algorithms
/ Bayesian modeling
/ Coordinate systems
/ Covariance matrices
/ MAP estimation
/ Markov chains
/ Model making
/ non-rigid deformable templates
/ Parametric models
/ Perceptron convergence procedure
/ shape statistics
/ Statistical variance
/ stochastic approximation algorithms
/ Stochastic models
2010
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Construction of Bayesian deformable models via a stochastic approximation algorithm: A convergence study
by
ALLASSONNIÈRE, STÉPHANIE
, KUHN, ESTELLE
, TROUVÉ, ALAIN
in
Approximation
/ Approximation algorithms
/ Bayesian modeling
/ Coordinate systems
/ Covariance matrices
/ MAP estimation
/ Markov chains
/ Model making
/ non-rigid deformable templates
/ Parametric models
/ Perceptron convergence procedure
/ shape statistics
/ Statistical variance
/ stochastic approximation algorithms
/ Stochastic models
2010
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Do you wish to request the book?
Construction of Bayesian deformable models via a stochastic approximation algorithm: A convergence study
by
ALLASSONNIÈRE, STÉPHANIE
, KUHN, ESTELLE
, TROUVÉ, ALAIN
in
Approximation
/ Approximation algorithms
/ Bayesian modeling
/ Coordinate systems
/ Covariance matrices
/ MAP estimation
/ Markov chains
/ Model making
/ non-rigid deformable templates
/ Parametric models
/ Perceptron convergence procedure
/ shape statistics
/ Statistical variance
/ stochastic approximation algorithms
/ Stochastic models
2010
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Construction of Bayesian deformable models via a stochastic approximation algorithm: A convergence study
Journal Article
Construction of Bayesian deformable models via a stochastic approximation algorithm: A convergence study
2010
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Overview
The problem of the definition and estimation of generative models based on deformable templates from raw data is of particular importance for modeling non-aligned data affected by various types of geometric variability. This is especially true in shape modeling in the computer vision community or in probabilistic atlas building in computational anatomy. A first coherent statistical framework modeling geometric variability as hidden variables was described in Allassonnière, Amit and Trouvé [J. R. Stat. Soc. Ser. B Stat. Methodol. 69 (2007) 3-29]. The present paper gives a theoretical proof of convergence of effective stochastic approximation expectation strategies to estimate such models and shows the robustness of this approach against noise through numerical experiments in the context of handwritten digit modeling.
Publisher
International Statistical Institute and Bernoulli Society for Mathematical Statistics and Probability,Bernoulli Society for Mathematical Statistics and Probability
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