DocumentCode
1153452
Title
IMPSAC: synthesis of importance sampling and random sample consensus
Author
Torr, Philip H S ; Davidson, Colin
Author_Institution
Microsoft Res. Ltd., Cambridge, UK
Volume
25
Issue
3
fYear
2003
fDate
3/1/2003 12:00:00 AM
Firstpage
354
Lastpage
364
Abstract
This paper proposes a new method for recovery of epipolar geometry and feature correspondence between images which have undergone a significant deformation, either due to large rotation or wide baseline of the cameras. The method also encodes the uncertainty by providing an arbitrarily close approximation to the posterior distribution of the two view relation. The method operates on a pyramid from coarse to fine resolution, thus raising the problem of how to propagate information from one level to another in a statistically consistent way. The distribution of the parameters at each resolution is encoded nonparametrically as a set of particles. At the coarsest level, a random sample consensus Monte Carlo Markov chain (RANSAC-MCMC) estimator is used to initialize this set of particles, the posterior can then be approximated as a mixture of Gaussians fitted to these particles. The distribution at a coarser level influences the distribution at a finer level using the technique of sampling-importance-resampling (SIR) and MCMC, which allows for asymptotically correct approximations of the posterior distribution. The estimate of the posterior distribution at the level above is being used as the importance sampling function to generate a new set of particles, which can be further improved by MCMC. It is shown that the method is superior to previous single resolution RANSAC-style feature matchers.
Keywords
Gaussian distribution; image reconstruction; importance sampling; statistical analysis; IMPSAC; Monte Carlo Markov chain estimator; RANSAC-MCMC estimator; SIR; arbitrarily close approximation; deformation; epipolar geometry recovery; feature correspondence; image resolution; images; importance sampling; posterior distribution; pyramid processor; random sample consensus; rotation; sampling-importance-resampling; Cameras; Gaussian approximation; Geometry; Helium; Image coding; Layout; Monte Carlo methods; Motion estimation; Robustness; Uncertainty;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2003.1182098
Filename
1182098
Link To Document