Cheng Guan Koay1,
Carlo Pierpaoli1, Peter J. Basser1
1NIH, Bethesda, MD, United States
In
this work, we present a simple and novel generalization of Mahalanobis
distance measure for the dyadics of the eigenvector for the purposes of
clustering fiber tracts and fiber orientation. This approach is built upon a
series of works by Koay et al. on the diffusion tensor estimation and the
error propagation framework. The proposed Mahalanobis distance measure for
the dyadics is the ideal measure for clustering of fiber tracts as it does
not depend on ad hoc combinatorial optimization that is typical in the
eigenvector-clustering techniques, which is due to the antipodal symmetry of
the eigenvector.