TY - JOUR
T1 - Learning a Model-Driven Variational Network for Deformable Image Registration
AU - Jia, Xi
AU - Thorley, Alexander
AU - Chen, Wei
AU - Qiu, Huaqi
AU - Shen, Linlin
AU - Styles, Iain
AU - Chang, Hyung Jin
AU - Leonardis, Ales
AU - Marvao, Antonio De
AU - O'Regan, Declan P
AU - Rueckert, Daniel
AU - Duan, Jinming
PY - 2021/8/30
Y1 - 2021/8/30
N2 - Data-driven deep learning approaches to image registration can be less accurate than conventional iterative approaches, especially when training data is limited. To address this issue and meanwhile retain the fast inference speed of deep learning, we propose VR-Net, a novel cascaded variational network for unsupervised deformable image registration. Using a variable splitting optimization scheme, we first convert the image registration problem, established in a generic variational framework, into two sub-problems, one with a point-wise, closed-form solution and the other one being a denoising problem. We then propose two neural layers (i.e. warping layer and intensity consistency layer) to model the analytical solution and a residual U-Net (termed generalized denoising layer) to formulate the denoising problem. Finally, we cascade the three neural layers multiple times to form our VR-Net. Extensive experiments on three (two 2D and one 3D) cardiac magnetic resonance imaging datasets show that VR-Net outperforms state-of-the-art deep learning methods on registration accuracy, whilst maintaining the fast inference speed of deep learning and the data-efficiency of variational models.
AB - Data-driven deep learning approaches to image registration can be less accurate than conventional iterative approaches, especially when training data is limited. To address this issue and meanwhile retain the fast inference speed of deep learning, we propose VR-Net, a novel cascaded variational network for unsupervised deformable image registration. Using a variable splitting optimization scheme, we first convert the image registration problem, established in a generic variational framework, into two sub-problems, one with a point-wise, closed-form solution and the other one being a denoising problem. We then propose two neural layers (i.e. warping layer and intensity consistency layer) to model the analytical solution and a residual U-Net (termed generalized denoising layer) to formulate the denoising problem. Finally, we cascade the three neural layers multiple times to form our VR-Net. Extensive experiments on three (two 2D and one 3D) cardiac magnetic resonance imaging datasets show that VR-Net outperforms state-of-the-art deep learning methods on registration accuracy, whilst maintaining the fast inference speed of deep learning and the data-efficiency of variational models.
U2 - 10.1109/TMI.2021.3108881
DO - 10.1109/TMI.2021.3108881
M3 - Article
C2 - 34460369
SN - 0278-0062
JO - IEEE transactions on medical imaging
JF - IEEE transactions on medical imaging
ER -