Accurate registration of images is an important and often crucial step in many areas of image processing and analysis, yet it is only used in a small percentage of possible applications. Automated registration methods are not considered to be sufficiently robust to handle complex deformations and locally deviating intensities. The motive of this research has therefore been the development of methodology that learns to cope with such situations, from example registrations defined by experts. Image processing by learning has been successfully applied for image segmentation, but the concept is new to image registration. Thus, the research question of this thesis is in general:-How can machine learning be employed to improve deformable image re...