She Lihuang, Zhong Hua, Zhang Shi. Fuzzy C-means clustering algorithm combined with markov random field for brain MR image segmentation[J]. Journal of Image and Graphics, 2012, 17(12): 1554-1560. DOI: 10.11834/jig.20121214.
Fuzzy C-means clustering algorithm combined with markov random field for brain MR image segmentation
Brain magnetic resonance imaging (MRI) has been widely used in clinical practice.Accurate segmentation of brain tissue structure can improve the reliability of the brain disease diagnosis and the effectiveness of treatments. The fuzzy C-Means Clustering (FCM) algorithm is good at solving ambiguities and uncertainties in images
and it is one of the most common brain MRI segmentations. However
FCM has a poor anti-noise ability
because it only uses the grayscale information without considering regional information. The Markov Random Field (MRF) algorithm takes full advantage of the image regional information
but it tends to over-segment. Therefore
we use FCM often combined with MRF to improve the results. In this paper
considering the problem in the existing combination algorithms of FCM and MRF
we propose a new adaptive weight combination of FCM and MRF algorithm for brain MRI segmentation. The algorithm adaptively updates the combining field weight parameter
using spatial relativity of the adjacent pixel regions. It improves the existing fixed weight combination methods of FCM and MRF
and makes full use of FCM and MRF. Experiment results show that this algorithm has stronger anti-noise property and higher segmentation precision than FCM and some other FCM improved algorithms.