International audienceFast and accurate registration of image data is a key component of computer-aided medical image analysis. Instead of performing the registration directly on the input images, many algorithms compute the transformation using a sparse representation extracted from the original data. However, in order to apply the resulting transformation onto the original images, a dense deformation field has to be reconstructed using a suitable inter-/extra-polation technique. In this paper, we employ the radial basis function (RBF) to reconstruct the dense deformation field from a sparse transformation computed by a model-based registration. Various kernels are tested using different scenario. The dense deformation field is used to war...
This paper presents a novel reduced radial basis function approach with exact surface reconstructio...
The Radial Basis Function (RBF) method with data reduction is an effective way to perform mesh defor...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
International audienceFast and accurate registration of image data is a key component of computer-ai...
In this work we tested the reliability of Radial Basis Function theory (RBF) for the image analysis ...
Digital image correlation methods allow the determination of the displacement (and thus the strain) ...
Digital image correlation (DIC) has been accepted in recent years as a reliable method for the calcu...
The Radial Basis Function method (RBF) can be used not only for reconstruction of a surface from sca...
Image deformation technique is widely used in the field of computer animation, image editing, medica...
This thesis describes different point based non-rigid registration methods in general and the "fast"...
Transformations based on radial basis functions have proven to be a powerful tool in image warping. ...
This paper presents a method for learning Radial Basis Functions (RBF) model with variable dimension...
A new fast non rigid registration algorithm is presented. The algorithm estimates a dense deformatio...
In this paper we consider landmark-based image registration using radial basis function interpolatio...
The registration of multi-modal medical image data is important in the fields of image guided surger...
This paper presents a novel reduced radial basis function approach with exact surface reconstructio...
The Radial Basis Function (RBF) method with data reduction is an effective way to perform mesh defor...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...
International audienceFast and accurate registration of image data is a key component of computer-ai...
In this work we tested the reliability of Radial Basis Function theory (RBF) for the image analysis ...
Digital image correlation methods allow the determination of the displacement (and thus the strain) ...
Digital image correlation (DIC) has been accepted in recent years as a reliable method for the calcu...
The Radial Basis Function method (RBF) can be used not only for reconstruction of a surface from sca...
Image deformation technique is widely used in the field of computer animation, image editing, medica...
This thesis describes different point based non-rigid registration methods in general and the "fast"...
Transformations based on radial basis functions have proven to be a powerful tool in image warping. ...
This paper presents a method for learning Radial Basis Functions (RBF) model with variable dimension...
A new fast non rigid registration algorithm is presented. The algorithm estimates a dense deformatio...
In this paper we consider landmark-based image registration using radial basis function interpolatio...
The registration of multi-modal medical image data is important in the fields of image guided surger...
This paper presents a novel reduced radial basis function approach with exact surface reconstructio...
The Radial Basis Function (RBF) method with data reduction is an effective way to perform mesh defor...
In this paper we introduce a novel, fast, efficient and gradient free approach to dense image regist...