ZHANG Jian-wei, GE-Qi. MR Image Segmentation of Fast CV Model Based on Local Statistic Information[J]. Journal of Image and Graphics, 2010, 15(1): 69. DOI: 10.11834/jig.20100112.
which has good ability to handle the blurry boundary and complex topological structures in images
has been widely used in image segmentations. However
the MR image which has intensity inhomogeneity cannot be segmented accurately by the CV model. And it needs computing all the data of the image during the iterative course. Arming at these disabilities
a fast method of CV model based on statistics in local regions is proposed. First
by calculating the statistics in local regions
Bayesian posterior probabilities that decide which class the pixels belong to are obtained
which are the foundations of the evolution of curve. In this way
the MR images can be segmented accurately. And then two lists are set for storing joint points inside and outside of the curve
and it only need to update the two lists to evolve the curve. By this method
it not only saves lots of time but also preserves the advantages of level set methods
such as the automatic handling of topological changes.