Author/Authors :
Cong, Wang Harbin Engineering University - Harbin, China , Song, Jianhua Harbin Engineering University - Harbin, China , Luan, Kuan Harbin Engineering University - Harbin, China , Liang, Hong Harbin Engineering University - Harbin, China , Wang, Lei Harbin Engineering University - Harbin, China , Ma, Xingcheng Harbin Engineering University - Harbin, China , Li, Jin Harbin Engineering University - Harbin, China
Abstract :
Because of the poor radio frequency coil uniformity and gradient-driven eddy currents, there is much noise and intensity
inhomogeneity (bias) in brain magnetic resonance (MR) image, and it severely affects the segmentation accuracy. Better
segmentation results are difficult to achieve by traditional methods; therefore, in this paper, a modified brain MR image
segmentation and bias field estimation model based on local and global information is proposed. We first construct local constraints
including image neighborhood information in Gaussian kernel mapping space, and then the complete regularization is established
by introducing nonlocal spatial information of MR image. The weighting between local and global information is automatically
adjusted according to image local information. At the same time, bias field information is coupled with the model, and it makes the
model reduce noise interference but also can effectively estimate the bias field information. Experimental results demonstrate that
the proposed algorithm has strong robustness to noise and bias field is well corrected.