PURPOSE : Despite its potential for improvements through supervision, deep learning-based registration approaches are difficult to train for large deformations in 3D scans due to excessive memory requirements. METHODS : We propose a new 2.5D convolutional transformer architecture that enables us to learn a memory-efficient weakly supervised deep learning model for multi-modal image registration. Furthermore, we firstly integrate a volume change control term into the loss function of a deep learning-based registration method to penalize occurring foldings inside the deformation field. RESULTS : Our approach succeeds at learning large deformations across multi-modal images. We evaluate our approach on 100 pair-wise registrations of CT and MRI...
Magnetic Resonance Imaging (MRI) typically recruits multiple sequences (defined here as “modalities”...
Deformable image registration is a crucial step in medical image analysis for finding a non-linear s...
Deformable image registration can be time consuming and often needs extensive parameterization to pe...
Deep learning-based methods for deformable image registration are attractive alternatives to convent...
Image registration and in particular deformable registration methods are pillars of medical imaging....
Deformable medical image registration plays an important role in clinical diagnosis and treatment. R...
In this work we propose a deep learning network for deformable image registration (DIRNet). The DIRN...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
Image registration, the process of aligning two or more images, is the core technique of many (semi-...
Deformable image registration is often a slow process when using conventional methods. To speed up d...
Deformable image registration can be time-consuming and often needs extensive parameterization to pe...
International audienceIn this paper, we propose an innovative approach for registration based on the...
Deformable image registration is usually performed manually by clinicians,which is time-consuming an...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
Magnetic Resonance Imaging (MRI) typically recruits multiple sequences (defined here as “modalities”...
Deformable image registration is a crucial step in medical image analysis for finding a non-linear s...
Deformable image registration can be time consuming and often needs extensive parameterization to pe...
Deep learning-based methods for deformable image registration are attractive alternatives to convent...
Image registration and in particular deformable registration methods are pillars of medical imaging....
Deformable medical image registration plays an important role in clinical diagnosis and treatment. R...
In this work we propose a deep learning network for deformable image registration (DIRNet). The DIRN...
One of the fundamental challenges in supervised learning for multimodal image registration is the la...
Image registration, the process of aligning two or more images, is the core technique of many (semi-...
Deformable image registration is often a slow process when using conventional methods. To speed up d...
Deformable image registration can be time-consuming and often needs extensive parameterization to pe...
International audienceIn this paper, we propose an innovative approach for registration based on the...
Deformable image registration is usually performed manually by clinicians,which is time-consuming an...
As a fundamental task in medical image analysis, deformable image registration (DIR) is the process ...
Magnetic Resonance Imaging (MRI) typically recruits multiple sequences (defined here as “modalities”...
Deformable image registration is a crucial step in medical image analysis for finding a non-linear s...
Deformable image registration can be time consuming and often needs extensive parameterization to pe...