2019 JRNL PP Jean-Marie Guyader - 1.pdf?
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Multichannel image registration is an important
challenge in medical image analysis. Multichannel
images result from modalities such as dual-energy CT or
multispectral microscopy. Besides,multichannel feature images
can be derived from acquired images, for instance, by
applying multiscale feature banks to the original images
to register. Multichannel registration techniques have been
proposed, but most of them are applicable to only two multichannel
images at a time. In the present study, we propose
to formulatemultichannel registration as a groupwise image
registration problem. In this way, we derive a method that allows
the registration of two or more multichannel images in
a fully symmetric manner (i.e., all images play the same role
in the registration procedure), and therefore, has transitive
consistency by definition. The method that we introduce
is applicable to any number of multichannel images, any
number of channels per image, and it allows to take into
account correlation between any pair of images and not
just corresponding channels. In addition, it is fully modular
in terms of dissimilarity measure, transformation model,
regularisation method, and optimisation strategy. For two
multimodal datasets, we computed feature images from the
initially acquired images, and applied the proposed registration
technique to the newly created sets of multichannel
images. MIND descriptors were used as feature images,
and we chose total correlation as groupwise dissimilarity
measure. Results show that groupwise multichannel image
registration is a competitive alternative to the pairwise
multichannel scheme, in terms of registration accuracy and
insensitivity towards registration reference spaces.