We present a super fast variational algorithm for the challenging problem of multimodal image registration. It is capable of registering full-body CT and PET images in about a second on a standard CPU with virtually no memory requirements. The algorithm is founded on a Gauss-Newton optimization scheme with specifically tailored, mathematically optimized computations for objective function and derivatives. It is fully parallelized and perfectly scalable, thus directly suitable for usage in many-core environments. The accuracy of our method was tested on 21 PET-CT scan pairs from clinical routine. The method was able to correct random distortions in the range from -10 cm to 10 cm translation and from -15° to 15° degree rotation to subvoxel ac...
A large number of algorithms have been developed to perform non-rigid registration and it is a tool ...
The analysis of image time series requires a correlation of the information between two images. The ...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
We present a novel parallelized formulation for fast non-linear image registration. By carefully ana...
For the successful completion of medical interventional procedures, several concepts, such as daily ...
We present a novel computational approach to fast and memory-efficient deformable image registration...
Maximization of mutual information of voxel intensities has been demonstrated to be a very powerful ...
Non-rigid registration techniques are commonly used in medical image analysis. However these techniq...
The registration of multi-modal medical image data is important in the fields of image guided surger...
Purpose: Image registration is an important aspect of medical image analysis and a key component in ...
This paper presents a generic approach to highly efficient image registration in two and three dimen...
Multimodal image registration method based on feature matching can't satisfy the demands of pixel le...
Abstract—Most registration algorithms for medical images may suffer from slow convergence and sensit...
Generally, image registration using genetic algorithm is a time-consuming process since the algorith...
We present a computationally inexpensive method for multi-modal image registration. Our approach emp...
A large number of algorithms have been developed to perform non-rigid registration and it is a tool ...
The analysis of image time series requires a correlation of the information between two images. The ...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
We present a novel parallelized formulation for fast non-linear image registration. By carefully ana...
For the successful completion of medical interventional procedures, several concepts, such as daily ...
We present a novel computational approach to fast and memory-efficient deformable image registration...
Maximization of mutual information of voxel intensities has been demonstrated to be a very powerful ...
Non-rigid registration techniques are commonly used in medical image analysis. However these techniq...
The registration of multi-modal medical image data is important in the fields of image guided surger...
Purpose: Image registration is an important aspect of medical image analysis and a key component in ...
This paper presents a generic approach to highly efficient image registration in two and three dimen...
Multimodal image registration method based on feature matching can't satisfy the demands of pixel le...
Abstract—Most registration algorithms for medical images may suffer from slow convergence and sensit...
Generally, image registration using genetic algorithm is a time-consuming process since the algorith...
We present a computationally inexpensive method for multi-modal image registration. Our approach emp...
A large number of algorithms have been developed to perform non-rigid registration and it is a tool ...
The analysis of image time series requires a correlation of the information between two images. The ...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...