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arxiv: 1706.04048 · v3 · pith:H3U7CRB5new · submitted 2017-06-13 · 🧮 math.NA · cs.CV· cs.NA· math.DS· math.FA· math.OC

Indirect Image Registration with Large Diffeomorphic Deformations

classification 🧮 math.NA cs.CVcs.NAmath.DSmath.FAmath.OC
keywords indirectregistrationimagedatadiffeomorphicdiffeomorphismslargenoisy
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The paper adapts the large deformation diffeomorphic metric mapping framework for image registration to the indirect setting where a template is registered against a target that is given through indirect noisy observations. The registration uses diffeomorphisms that transform the template through a (group) action. These diffeomorphisms are generated by solving a flow equation that is defined by a velocity field with certain regularity. The theoretical analysis includes a proof that indirect image registration has solutions (existence) that are stable and that converge as the data error tends so zero, so it becomes a well-defined regularization method. The paper concludes with examples of indirect image registration in 2D tomography with very sparse and/or highly noisy data.

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