A training-free recursive multiresolution framework for diffeomorphic deformable image registration
Ameneh Sheikhjafari, Michelle Noga, Kumaradevan Punithakumar and, Nilanjan Ray

TL;DR
This paper introduces a training-free, recursive multiresolution framework for diffeomorphic image registration that achieves state-of-the-art accuracy without the need for training data, leveraging an ODE-based approach.
Contribution
It presents a novel, training-free diffeomorphic registration method using an ODE-inspired recursive scheme, avoiding training biases of deep learning models.
Findings
Achieves state-of-the-art registration accuracy on cardiac datasets.
Maintains desirable diffeomorphic properties during registration.
Operates without requiring a training dataset.
Abstract
Diffeomorphic deformable image registration is one of the crucial tasks in medical image analysis, which aims to find a unique transformation while preserving the topology and invertibility of the transformation. Deep convolutional neural networks (CNNs) have yielded well-suited approaches for image registration by learning the transformation priors from a large dataset. The improvement in the performance of these methods is related to their ability to learn information from several sample medical images that are difficult to obtain and bias the framework to the specific domain of data. In this paper, we propose a novel diffeomorphic training-free approach; this is built upon the principle of an ordinary differential equation. Our formulation yields an Euler integration type recursive scheme to estimate the changes of spatial transformations between the fixed and the moving image…
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