In this paper, we propose new multilevel optimization methods for minimizing continuously differentiable functions obtained by discretizing models for image registration problems. These multilevel schemes rely on a novel two-step Gauss-Newton method, in which a second step is computed within each iteration by minimizing a quadratic approximation of the objective function over a certain two-dimensional subspace. Numerical results on image registration problems show that the proposed methods can outperform the standard multilevel Gauss-Newton method
AbstractVariational registration models are non-rigid and deformable imaging techniques for accurate...
In this work, we investigate image registration in a variational framework and focus on regularizati...
We propose a new optimization model for non-rigid registration of images using multi-metrics. The or...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper we introduce a new framework for image registration. Our formulation is based on consi...
This thesis examines methods for efficient and reliable image registration in the context of compute...
In this work we propose a variational model for multi-modal image registration. It minimizes a new f...
In this work we propose a variational model for multi-modal image registration. It minimizes a new f...
The main purpose of optimisation in image processing is to compensate for missing, corrupted image d...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
AbstractVariational registration models are non-rigid and deformable imaging techniques for accurate...
In this work, we investigate image registration in a variational framework and focus on regularizati...
We propose a new optimization model for non-rigid registration of images using multi-metrics. The or...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper, we propose new multilevel optimization methods for minimizing continuously differenti...
In this paper we introduce a new framework for image registration. Our formulation is based on consi...
This thesis examines methods for efficient and reliable image registration in the context of compute...
In this work we propose a variational model for multi-modal image registration. It minimizes a new f...
In this work we propose a variational model for multi-modal image registration. It minimizes a new f...
The main purpose of optimisation in image processing is to compensate for missing, corrupted image d...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
The Beltrami coefficient from complex analysis has recently been found to provide a robust constrain...
AbstractVariational registration models are non-rigid and deformable imaging techniques for accurate...
In this work, we investigate image registration in a variational framework and focus on regularizati...
We propose a new optimization model for non-rigid registration of images using multi-metrics. The or...