A novel probabilistic, group-wise rigid registration framework
is proposed in this study, to robustly align and establish correspondence
across anatomical shapes represented as unstructured point sets.
Student’s t-mixture model (TMM) is employed to exploit their inherent
robustness to outliers. The primary application for such a framework is
the automatic construction of statistical shape models (SSMs) of anatomical
structures, from medical images. Tools used for automatic segmentation
and landmarking of medical images often result in segmentations
with varying proportions of outliers. The proposed approach is able to
robustly align shapes and establish valid correspondences in the presence
of considerable outliers and large variations in shape. A multi-resolution
registration (mrTMM) framework is also formulated, to further improve
the performance of the proposed TMM-based registration method. Comparisons
with a state-of-the art approach using clinical data show that
the mrTMM method in particular, achieves higher alignment accuracy
and yields SSMs that generalise better to unseen shapes