A novel method for automatic quality assessment of medical image registration is presented. The method is based on supervised learning of local alignment patterns, which are captured by statistical image features at distinctive landmark points. A two-stage classifier cascade, employing an optimal multi-feature model, classifies local alignments into three quality categories: correct, poor or wrong alignment. We establish a reference registration error set as basis for training and testing of the method. It consists of image registrations obtained from different non-rigid registration algorithms and manually established point correspondences of automatically determined landmarks. We employ a set of different classifiers and evaluate the perf...
This thesis proposed a novel machine learning based image feature selection solution\ud for medical ...
Error estimation in nonlinear medical image registration is a nontrivial problem that is important f...
Predicting registration error can be useful for evaluation of registration procedures, which is impo...
A novel method for automatic quality assessment of medical image registration is presented. The meth...
A novel method for automatic quality assessment of medical image registration is presented. The meth...
Accurate registration of images is an important and often crucial step in many areas of image proces...
Purpose: To develop and evaluate a method to automatically identify and quantify deformable image re...
Image registration is the process of aligning images by finding the spatial relation between the ima...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
An algorithm is presented for the efficient semi-automatic construction of a detailed reference stan...
Quantitative evaluation of image registration algorithms is a difficult and under-addressed issue du...
BACKGROUND: Deformable image registrations are prone to errors in aligning reliable anatomically fea...
This thesis proposed a novel machine learning based image feature selection solution\ud for medical ...
Error estimation in nonlinear medical image registration is a nontrivial problem that is important f...
Predicting registration error can be useful for evaluation of registration procedures, which is impo...
A novel method for automatic quality assessment of medical image registration is presented. The meth...
A novel method for automatic quality assessment of medical image registration is presented. The meth...
Accurate registration of images is an important and often crucial step in many areas of image proces...
Purpose: To develop and evaluate a method to automatically identify and quantify deformable image re...
Image registration is the process of aligning images by finding the spatial relation between the ima...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
An algorithm is presented for the efficient semi-automatic construction of a detailed reference stan...
Quantitative evaluation of image registration algorithms is a difficult and under-addressed issue du...
BACKGROUND: Deformable image registrations are prone to errors in aligning reliable anatomically fea...
This thesis proposed a novel machine learning based image feature selection solution\ud for medical ...
Error estimation in nonlinear medical image registration is a nontrivial problem that is important f...
Predicting registration error can be useful for evaluation of registration procedures, which is impo...