On combining algorithms for deformable image registration

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Abstract

We propose a meta-algorithm for registration improvement by combining deformable image registrations (MetaReg). It is inspired by a well-established method from machine learning, the combination of classifiers. MetaReg consists of two main components: (1) A strategy for composing an improved registration by combining deformation fields from different registration algorithms. (2) A method for regularization of deformation fields post registration (UnfoldReg). In order to compare and combine different registrations, MetaReg utilizes a landmark-based classifier for assessment of local registration quality. We present preliminary results of MetaReg, evaluated on five CT pulmonary breathhold inspiration and expiration scan pairs, employing a set of three registration algorithms (NiftyReg, Demons, Elastix). MetaReg generated for each scan pair a registration that is better than any registration obtained by each registration algorithm separately. On average, 10% improvement is achieved, with a reduction of 30% of regions with misalignments larger than 5mm, compared to the best single registration algorithm. © 2012 Springer-Verlag.
Original languageEnglish
Title of host publication5th International Workshop on Biomedical Image Registration (WBIR 2012) 7 - 8 July 2012, Nashville, TN
EditorsB.M. Dawant
Place of PublicationBerlin
PublisherSpringer
Pages256-265
ISBN (Print)9783642313394
DOIs
Publication statusPublished - 2012

Publication series

NameLecture Notes in Computer Science
Volume7359
ISSN (Print)0302-9743

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