We introduce a boosting algorithm to improve on existing methods for deformable image registration (DIR). The proposed DIRBoost algorithm is inspired by the theory on hypothesis boosting, well known in the field of machine learning. DIRBoost utilizes a method for automatic registration error detection to obtain estimates of local registration quality. All areas detected as erroneously registered are subjected to boosting, i.e. undergo iterative registrations by employing boosting masks on both the fixed and moving image. We validated the DIRBoost algorithm on three different DIR methods (ANTS gSyn, NiftyReg, and DROP) on three independent reference datasets of pulmonary image scan pairs. DIRBoost reduced registration errors significantly an...
We evaluated the accuracy of one commercially available and three publicly available deformable imag...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
BACKGROUND: Deformable image registrations are prone to errors in aligning reliable anatomically fea...
We introduce a boosting algorithm to improve on existing methods for deformable image registration (...
We introduce a boosting algorithm to improve on existing methods for deformable image registration (...
Item does not contain fulltextWe introduce a boosting algorithm to improve on existing methods for d...
We introduce a novel boosting algorithm to boost - i.e. improve on - existing methods for deformable...
We propose a meta-algorithm for registration improvement by combining deformable image registrations...
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...
Deformable image registration (DIR) has been proposed for lung ventilation calculation using 4D CT. ...
Deformable image registration can be time consuming and often needs extensive parameterization to pe...
Deformable image registration is often a slow process when using conventional methods. To speed up d...
Abstract of a paper presented at the 48th Annual Meeting of the American Society for Therapeutic Rad...
We evaluated the accuracy of one commercially available and three publicly available deformable imag...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
BACKGROUND: Deformable image registrations are prone to errors in aligning reliable anatomically fea...
We introduce a boosting algorithm to improve on existing methods for deformable image registration (...
We introduce a boosting algorithm to improve on existing methods for deformable image registration (...
Item does not contain fulltextWe introduce a boosting algorithm to improve on existing methods for d...
We introduce a novel boosting algorithm to boost - i.e. improve on - existing methods for deformable...
We propose a meta-algorithm for registration improvement by combining deformable image registrations...
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...
Deformable image registration (DIR) has been proposed for lung ventilation calculation using 4D CT. ...
Deformable image registration can be time consuming and often needs extensive parameterization to pe...
Deformable image registration is often a slow process when using conventional methods. To speed up d...
Abstract of a paper presented at the 48th Annual Meeting of the American Society for Therapeutic Rad...
We evaluated the accuracy of one commercially available and three publicly available deformable imag...
We propose a novel image registration framework which uses classifiers trained from examples of alig...
BACKGROUND: Deformable image registrations are prone to errors in aligning reliable anatomically fea...