Nonlinear registration is an important technique to align two different images and widely applied in medical image analysis. In this paper, we develop a novel nonlinear registration framework based on the diffeomorphic demons, where a reciprocal regularizer is introduced to assume that the deformation between two images is an exact diffeomorphism. In detail, first, we adopt a bidirectional metric to improve the symmetry of the energy functional, whose variables are two reciprocal deformations. Secondly, we slack these two deformations into two independent variables and introduce a reciprocal regularizer to assure the deformations being the exact diffeomorphism. Then, we utilize an alternating iterative strategy to decouple the model into tw...
Image registration is usually the first step before performing any post-processing operations such a...
We present a new framework for diffeomorphic image registration which supports natural interpretatio...
© Springer International Publishing AG 2017. This paper presents an efficient algorithm for large de...
A nonlinear viscoelastic image registration algorithm based on the demons paradigm and incorporating...
Abstract. This paper presents a new image registration algorithm that accommodates locally large non...
A nonlinear viscoelastic image registration algorithm based on the demons paradigm and incorporating...
Abstract Background Diffeomorphic demons can not only guarantee smooth and reversible deformation, b...
Image registration aims to align two images through a spatial transformation. It plays a significant...
The demons algorithm is a fast non-parametric non-rigid registration method. In recent years great e...
Diffeomorphic demons can guarantee smooth and reversible deformation and avoid unreasonable deformat...
The application of deep learning approaches in medical image registration has decreased the registra...
Nonlinear registration is critical to many aspects of Neuroimaging research. It facilitates averagin...
Image Registration is an algorithmic optimization process primarily aimed at estimating the most opt...
International audienceIn this paper, we propose a new large-deformation nonlinear image registration...
This paper presents a new method for image registration based on jointly estimating the forward and ...
Image registration is usually the first step before performing any post-processing operations such a...
We present a new framework for diffeomorphic image registration which supports natural interpretatio...
© Springer International Publishing AG 2017. This paper presents an efficient algorithm for large de...
A nonlinear viscoelastic image registration algorithm based on the demons paradigm and incorporating...
Abstract. This paper presents a new image registration algorithm that accommodates locally large non...
A nonlinear viscoelastic image registration algorithm based on the demons paradigm and incorporating...
Abstract Background Diffeomorphic demons can not only guarantee smooth and reversible deformation, b...
Image registration aims to align two images through a spatial transformation. It plays a significant...
The demons algorithm is a fast non-parametric non-rigid registration method. In recent years great e...
Diffeomorphic demons can guarantee smooth and reversible deformation and avoid unreasonable deformat...
The application of deep learning approaches in medical image registration has decreased the registra...
Nonlinear registration is critical to many aspects of Neuroimaging research. It facilitates averagin...
Image Registration is an algorithmic optimization process primarily aimed at estimating the most opt...
International audienceIn this paper, we propose a new large-deformation nonlinear image registration...
This paper presents a new method for image registration based on jointly estimating the forward and ...
Image registration is usually the first step before performing any post-processing operations such a...
We present a new framework for diffeomorphic image registration which supports natural interpretatio...
© Springer International Publishing AG 2017. This paper presents an efficient algorithm for large de...