In this work package we study random shapes that reside in non-linear spaces. An important example is the tree-spaces, arising naturally in modelling of anatomical networks. The field of non-linear statistics has close connections to functional data analysis, and random topology and graphs.
While there is a deep understanding of the mathematical and computational aspects of many data types living in non-linear spaces, a detailed understanding of random variation in non-linear spaces and how to handle randomness statistically is largely missing.
WP2.1: Deformation modelling and statistics of deformations
WP2.2: Modelling and inference in non-linear spaces
WP2.3: Applications in diffusion weighted imaging
In the second funding period of CSGB, we focus on projects in (a) deformation modelling and statistics of deformations and (b) modelling and inference in non-linear spaces.
In the second funding period, we aim at using the developed mixture models for representing local diffusion orientation distributions that take crossing fiber diffusions into account. Mixture models have appeared previously, but crucial issues such as matching and aligning of modes have not been addressed.