Unsupervised learning of multimodal image registration using domain adaptation with projected Earth Move's discrepancies
Mattias P Heinrich, Lasse Hansen

TL;DR
This paper introduces an unsupervised domain adaptation method for multimodal image registration, leveraging projected Earth Mover's discrepancies to improve registration accuracy across different imaging modalities.
Contribution
It presents the first application of unsupervised domain adaptation for discrete multimodal registration, using classifier discrepancies and a novel approximation of the Wasserstein metric.
Findings
Registration accuracy improved from 33% to 44%.
Method effectively transfers from mono- to multimodal registration.
Demonstrated on canine MRI scans.
Abstract
Multimodal image registration is a very challenging problem for deep learning approaches. Most current work focuses on either supervised learning that requires labelled training scans and may yield models that bias towards annotated structures or unsupervised approaches that are based on hand-crafted similarity metrics and may therefore not outperform their classical non-trained counterparts. We believe that unsupervised domain adaptation can be beneficial in overcoming the current limitations for multimodal registration, where good metrics are hard to define. Domain adaptation has so far been mainly limited to classification problems. We propose the first use of unsupervised domain adaptation for discrete multimodal registration. Based on a source domain for which quantised displacement labels are available as supervision, we transfer the output distribution of the network to better…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Advanced Neural Network Applications
