Manually labeled landmark sets are often required as in-
puts for landmark-based image registration. Identifying an
optimal subset of landmarks from a training dataset may be
useful in reducing the labor intensive task of manual label-
ing. In this paper, we present a new problem and a method
to solve it: given a set of N landmarks, find the k(< N)
best landmarks such that aligning these k landmarks that
produce the best overall alignment of all N landmarks. The
resulting procedure allows us to select a reduced number of
landmarks to be labeled as a part of the registration proce-
dure. We apply this methodology to the problem of register-
ing cerebral cortical surfaces extracted from MRI data. We
use manually traced sulcal curves as landmarks in perform-
ing inter-subject registration of these surfaces. To minimize
the error metric, we analyze the correlation structure of the
sulcal errors in the landmark points by modeling them as
a multivariate Gaussian process. S...
Anand A. Joshi, David W. Shattuck, Dimitrios Panta