Article ID Journal Published Year Pages File Type
526467 Computer Vision and Image Understanding 2007 9 Pages PDF
Abstract

Using standard statistical assumptions we derive a stochastic differential equation generating flows of diffeomorphisms. These stochastic processes provide a generative model for non-rigid registration and image warping problems. We give a mathematically rigorous derivation of the renormalized Brownian density in context of maximum a posteriori estimation of the underlying Brownian motions driving the warp flow. The second part of the paper combines the prior model with a likelihood model for image sequences. The combined model is employed to study the warp field for an image sequence of turbulent smoke.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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