Author/Authors :
Feng, Chaolu Key Laboratory of Intelligent Computing in Medical Image (MIIC) - Ministry of Education - Shenyang - Liaoning, China , Yang, Jinzhu School of Computer Science and Engineering - Northeastern University - Shenyang - Liaoning, China , Lou, Chunhui School of Computer Science and Engineering - Northeastern University - Shenyang - Liaoning, China , Li, Wei School of Computer Science and Engineering - Northeastern University - Shenyang - Liaoning, China , Yu, Kun Key Laboratory of Medical Image Computing (MIC) - Shenyang - Liaoning, China , Zhao, Dazhe School of Computer Science and Engineering - Northeastern University - Shenyang - Liaoning, China
Abstract :
Image segmentation is still an open problem especially when intensities of the objects of interest are overlapped due to the presence
of intensity inhomogeneities. A bias correction embedded level set model is proposed in this paper where inhomogeneities are
estimated by orthogonal primary functions. First, an inhomogeneous intensity clustering energy is defined based on global
distribution characteristics of the image intensities, and membership functions of the clusters described by the level set function
are then introduced to define the data term energy of the proposed model. Second, a regularization term and an arc length term
are also included to regularize the level set function and smooth its zero-level set contour, respectively. Third, the proposed
model is extended to multichannel and multiphase patterns to segment colorful images and images with multiple objects,
respectively. Experimental results and comparison with relevant models demonstrate the advantages of the proposed model in
terms of bias correction and segmentation accuracy on widely used synthetic and real images and the BrainWeb and the IBSR
image repositories.