Stochastic Metamorphosis in Imaging Science

Abstract

In the pattern matching approach to imaging science, the process of metamorphosis in template matching with dynamical templates was introduced in ty05b. In HoTrYo2009 the metamorphosis equations of ty05b were recast into the Euler-Poincar\'e variational framework of HoMaRa1998 and shown to contain the equations for a perfect complex fluid Holm2002. This result related the data structure underlying the process of metamorphosis in image matching to the physical concept of order parameter in the theory of complex fluids GBHR2013. In particular, it cast the concept of Lagrangian paths in imaging science as deterministically evolving curves in the space of diffeomorphisms acting on image data structure, expressed in Eulerian space. (In contrast, the landmarks in the standard LDDMM approach are Lagrangian.) For the sake of introducing an Eulerian uncertainty quantification approach in imaging science, we extend the method of metamorphosis to apply to image matching along stochastically evolving time dependent curves on the space of diffeomorphisms. The approach will be guided by recent progress in developing stochastic Lie transport models for uncertainty quantification in fluid dynamics in holm2015variational,CrFlHo2017.

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