Polaffini: A feature-based approach for robust affine and polyaffine image registration
Antoine Legouhy, Cosimo Campo, Ross Callaghan, Hojjat Azadbakht, Hui Zhang

TL;DR
Polaffini introduces a feature-based medical image registration method leveraging deep learning for anatomical segmentation, enabling robust affine and polyaffine transformations that outperform intensity-based methods in accuracy and speed.
Contribution
This work presents Polaffini, a novel framework that uses deep learning-derived anatomical features for efficient, accurate, and flexible image registration with diffeomorphic properties.
Findings
Outperforms intensity-based methods in structural alignment.
Provides better initialization for non-linear registration.
Fast, robust, and suitable for medical image pipelines.
Abstract
In this work we present Polaffini, a robust and versatile framework for anatomically grounded registration. Medical image registration is dominated by intensity-based registration methods that rely on surrogate measures of alignment quality. In contrast, feature-based approaches that operate by identifying explicit anatomical correspondences, while more desirable in theory, have largely fallen out of favor due to the challenges of reliably extracting features. However, such challenges are now significantly overcome thanks to recent advances in deep learning, which provide pre-trained segmentation models capable of instantly delivering reliable, fine-grained anatomical delineations. We aim to demonstrate that these advances can be leveraged to create new anatomically-grounded image registration algorithms. To this end, we propose Polaffini, which obtains, from these segmented regions,…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Medical Imaging and Analysis · Robotics and Sensor-Based Localization
