A More Robust Multigrid Algorithm for Diffusion Type Registration Model



Thompson, Tony and Chen, K ORCID: 0000-0002-6093-6623
(2019) A More Robust Multigrid Algorithm for Diffusion Type Registration Model. Journal of Computational and Applied Mathematics, 361. pp. 502-527.

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Abstract

Registration refers to the useful process of aligning two similar but different intensity image functions in order to either track changes or combine information. Variational models are capable of finding transform maps containing large and non-uniform deformations between such a pair of images. Since finding a transform map is an inverse problem, as with all models, suitable regularisation is necessary to overcome the non-uniqueness of the problem. In the case of diffusion type models regularisation terms impose smoothness on the transformation by minimising the gradient of the flow field. The diffusion model also coincides with the basic model for optical flow frameworks of Horn and Schunck (1981). The biggest drawback with variational models is the large computational cost required to solve the highly non-linear system of PDEs; Chumchob and Chen (2011) developed a non-linear multigrid (NMG) method to address this cost problem. However, a closer look at the analysis of the NMG scheme highlighted omissions which affected the convergence of the NMG scheme. Moreover, the NMG method proposed by Chumchob and Chen did not impose any control of non-physical folding which invalidates a map. This paper has proposed several key ideas. First we re-evaluate the analysis of the NMG method to show how the omissions in Chumchob and Chen (2011) have a noticeable impact on the convergence of the NMG method. In addition, we also provide a way of estimating the convergence rate of a solver on the coarsest grid in order to estimate the number of iterations that will be required to obtain a solution with appropriate accuracy. Second we propose an extension to the Chumchob–Chen NMG method which controls any folding within the deformation. Experimental results on the proposed multigrid framework demonstrate improvements in convergence and the accuracy of registrations compared with previous methods.

Item Type: Article
Uncontrolled Keywords: Variational model, Image registration, Fast Multigrid, Mesh folding control
Depositing User: Symplectic Admin
Date Deposited: 20 May 2019 12:07
Last Modified: 19 Jan 2023 00:44
DOI: 10.1016/j.cam.2019.04.006
Related URLs:
URI: https://livrepository.liverpool.ac.uk/id/eprint/3042141