The problem of matching unlabeled point sets using Bayesian inference is considered. Two recently proposed models for the likelihood are compared, based on the Procrustes size-and-shape and the full configuration. Bayesian inference is carried out for matching point sets using Markov chain Monte Carlo simulation. An improvement to the existing Procrustes algorithm is proposed which improves convergence rates, using occasional large jumps in the burn-in period. The Pro-crustes and configuration methods are compared in a simulation study and using real data, where it is of interest to estimate the strengths of matches between protein binding sites. The performance of both methods is generally quite similar, and a connection between the two mo...
We consider the problem of landmark matching between two unlabelled point sets, in particular where ...
The problem of determining the mapping between a pair of images is called image matching and is fund...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
The problem of matching unlabeled point sets using Bayesian inference is considered. Two recently pr...
© 2015 John Wiley & Sons, Ltd. All rights reserved. Professor Kanti Mardia has made numerous origina...
We consider the Procrustes statistics for a form arising from matching problems in Bioin-formatics. ...
This thesis considers the development of efficient MCMC sampling methods for Bayesian models used fo...
A Bayesian approach to object matching is presented. An object and a scene are each represented by f...
Abstract. We present a probabilistic graphical model for point set matching. By using a result about...
An important problem in shape analysis is to match configurations of points in space after filtering...
Abstract Background Matching functional sites is a key problem for the understanding of protein func...
We present a probabilistic technique for matching partbased shapes. Shapes are represented by unlabe...
The three-dimensional shape of a protein plays a key role in determining its function, so proteins i...
Increasingly complex applications involve large datasets in combination with nonlinear and high dime...
An important problem in shape analysis is to match configurations of points in space filtering out s...
We consider the problem of landmark matching between two unlabelled point sets, in particular where ...
The problem of determining the mapping between a pair of images is called image matching and is fund...
Parameter inference and model selection are very important for mathematical modeling in systems biol...
The problem of matching unlabeled point sets using Bayesian inference is considered. Two recently pr...
© 2015 John Wiley & Sons, Ltd. All rights reserved. Professor Kanti Mardia has made numerous origina...
We consider the Procrustes statistics for a form arising from matching problems in Bioin-formatics. ...
This thesis considers the development of efficient MCMC sampling methods for Bayesian models used fo...
A Bayesian approach to object matching is presented. An object and a scene are each represented by f...
Abstract. We present a probabilistic graphical model for point set matching. By using a result about...
An important problem in shape analysis is to match configurations of points in space after filtering...
Abstract Background Matching functional sites is a key problem for the understanding of protein func...
We present a probabilistic technique for matching partbased shapes. Shapes are represented by unlabe...
The three-dimensional shape of a protein plays a key role in determining its function, so proteins i...
Increasingly complex applications involve large datasets in combination with nonlinear and high dime...
An important problem in shape analysis is to match configurations of points in space filtering out s...
We consider the problem of landmark matching between two unlabelled point sets, in particular where ...
The problem of determining the mapping between a pair of images is called image matching and is fund...
Parameter inference and model selection are very important for mathematical modeling in systems biol...