Title :
Statistical deformable model-based segmentation of image motion
Author :
Kervrann, Charles ; Heitz, Fabrice
Author_Institution :
IRISA/INRA, Rennes, France
fDate :
4/1/1999 12:00:00 AM
Abstract :
We present a statistical method for the motion-based segmentation of deformable structures undergoing nonrigid movements. The proposed approach relies on two models describing the shape of interest, its variability, and its movement. The first model corresponds to a statistical deformable template that constrains the shape and its deformations. The second model is introduced to represent the optical flow field inside the deformable template. These two models are combined within a single probability distribution, which enables to derive shape and motion estimates using a maximum likelihood approach. The method requires no manual initialization and is demonstrated on synthetic data and on a medical X-ray image sequence
Keywords :
image segmentation; image sequences; maximum likelihood estimation; medical image processing; motion estimation; probability; statistical analysis; deformable structures; image motion; maximum likelihood estimation; medical X-ray image sequence; model-based segmentation; motion estimates; motion-based image segmentation; nonrigid movements; optical flow field; probability distribution; shape estimates; statistical deformable template; statistical method; synthetic data; Biomedical imaging; Biomedical optical imaging; Deformable models; Image motion analysis; Image segmentation; Maximum likelihood estimation; Motion estimation; Probability distribution; Shape; Statistical analysis;
Journal_Title :
Image Processing, IEEE Transactions on