Abstract :
Proposes a generalized and intuitive framework for multi-modality image registration, based on clustering in the intensity mapping plot (IMP, also known as feature space or joint histogram). Established methods such as Woods´, Hill´s moment-based, joint-entropy and mutual-information methods can be represented as special cases of this generalization. To register two images, the IMP, which is a 2D scatter plot, is constructed by plotting an (x,y) point for every corresponding voxel pair in the images, x=voxel intensity from image 1,y=voxel intensity from image 2. Clusters are formed when the images are registered. The degree of clustering is assessed by assigning a clustering measure (local density of the IMP) to every point in the IMP, and summing the local density of all points. The authors investigated three issues: 1. the choice of monotonically increasing functions for evaluating the local density, 2. the effects of normalization, and 3. the effects of background elimination. Choices for these three issues allow customization of the authors´ generalized framework to previously established methods. By systematic analysis of these choices, the authors propose new modifications to improve registration accuracy and computational efficiency
Keywords :
image registration; medical image processing; Hill´s moment-based method; Woods´ method; background elimination effects; corresponding voxel pair; feature space; generalized and intuitive framework; generalized clustering-based image registration; intensity mapping plot; joint histogram; local density; monotonically increasing functions; multi-modality images; Biomedical measurements; Computational efficiency; Density measurement; Histograms; Image registration; Magnetic resonance; Magnetic resonance imaging; Pixel; Positron emission tomography; Scattering;