Medical Imaging 2024: Image Processing 2024
DOI: 10.1117/12.3006539
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Learning physics-inspired regularization for medical image registration with hypernetworks

Anna Reithmeir,
Julia Schnabel,
Veronika Zimmer

Abstract: Medical image registration aims to identify the spatial deformation between images of the same anatomical region and is fundamental to image-based diagnostics and therapy. To date, the majority of the deep learning-based registration methods employ regularizers that enforce global spatial smoothness, e.g., the diffusion regularizer. However, such regularizers are not tailored to the data and might not be capable of reflecting the complex underlying deformation. In contrast, physics-inspired regularizers promot… Show more

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Cited by 2 publications
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