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A minimum description length objective function for groupwise non-rigid image registration

Marsland, S; Twining, C J; Taylor, C J

Image and Vision Computing. 2008;26(3):333-346.

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Abstract

Non-rigid registration finds a dense correspondence between a pair of images, so that analogous structures in the two images are aligned. While this is sufficient for atlas comparisons, in order for registration to be an aid to diagnosis, registrations need to be performed on a set of images. In this paper, we describe an objective function that can be used for this group wise registration. We view the problem of image registration as one of learning correspondences from a set of exemplar images (the registration set), and derive a minimum description length (MDL) objective function. We give a brief description of the MDL approach as applied to transmitting both single images and sets of images, and show that the concept of a reference image (which is central to defining a consistent correspondence across a set of images) appears naturally as a valid model choice in the MDL approach. In this paper, we demonstrate both rigid and non-rigid groupwise registration using our MDL objective function on two-dimensional T1 MR images of the human brain, and show that we obtain a sensible alignment. The extension to the multi-modal case is also discussed. We conclude with a discussion as to how the MDL principle can be extended to include other encoding models than those we present here. (c) 2007 Elsevier B.V. All rights reserved.

Bibliographic metadata

Type of resource:
Content type:
Publication form:
Published date:
ISSN:
Publisher:
Volume:
26
Issue:
3
Start page:
333
End page:
346
Total:
14
Digital Object Identifier:
10.1016/j.imavis.2006.12.009
ISI Accession Number:
WOS:000252196500003
Related website(s):
  • Related website <Go to ISI>://WOS:000252196500003
General notes:
  • Times Cited: 1 15th Annual British Machine Vision Conference (BMVC 2004) SEP, 2004 Kingston Univ, London, ENGLAND
Access state:
Active

Record metadata

Manchester eScholar ID:
uk-ac-man-scw:115321
Created by:
Taylor, Christopher
Created:
30th January, 2011, 16:15:52
Last modified by:
Bentley, Hazel
Last modified:
12th March, 2014, 01:57:54

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