Unifying Maximum Likelihood Approaches in Medical Image Registration (1999)
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BibTeX
@MISC{Roche99unifyingmaximum,
author = {Alexis Roche and Grégoire Malandain and Nicholas Ayache},
title = {Unifying Maximum Likelihood Approaches in Medical Image Registration},
year = {1999}
}
Years of Citing Articles
OpenURL
Abstract
While intensity-based similarity measures are increasingly used for medical image registration, they often rely on implicit assumptions regarding the imaging physics. The motivation of this paper is to clarify the assumptions on which a number of popular similarity measures rely. After formalizing registration based on general image acquisition models, we show that the search for an optimal measure can be cast into a maximum likelihood estimation problem. We then derive similarity measures corresponding to different modeling assumptions and retrieve some well-known measures (correlation coefficient, correlation ratio, mutual information). Finally, we present results of rigid registration between several image modalities to illustrate the importance of choosing an appropriate similarity measure.







