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结合概率密度函数和主动轮廓模型的磁共振图像分割 被引量:9

MR image segmentation based on probability density function and active contour model
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摘要 为了提高大脑磁共振图像的分割精度,提出了一种新的图像分割算法。首先,分析了常用于大脑磁共振图像分割的高斯混合模型和主动轮廓模型的优缺点,联合高斯混合模型的概率密度函数和主动轮廓模型的能量函数构造了一个新的能量函数。然后,利用遗传算法和最大期望算法获取概率密度函数的参数值。最后,利用水平集方法和梯度下降流法,对获得的能量函数进行最小化,从而得到最终的分割结果。与传统方法相比,本文算法对脑组织中的白质和灰质的分割精度分别提高了6.73%和14.07%。该算法利用像素点的区域信息和概率值驱动主动轮廓曲线的演化,能有效区分具有相近灰度值的不同区域,从而提高了大脑磁共振图像的分割精度。 To improve the segmentation precision of brain Magnetic Resonance(MR)imaging,a novel brain tissue automated segmentation method was proposed.Firstly,the merits and demerits of Gaussian mixture model and active contour model used for MR image segmentation were analyzed,and a new energy function was constructed through combining the probability density function of the Gaussian mixture model with the energy function of the active contour model.Then,the genetic algorithm and expectation maximization algorithm were used to get the parameter values of the probability density function.Finally,segmentation results were achieved through minimizing the novel energy function by using the level set method and the gradient descent algorithm.The experiment results clearly indicate that the segmentation accuracies of white matter and gray matter in brain tissue by the proposed method are increased by 6.73% and 14.07%,respectively as compared with that of the traditionalmethods.By using the area information and probability values of pixel points to drive the active contour curve,the proposed method automatically segments the brain MR image with high enough accuracy and improves the segmentation accuracy of brain MR images.
出处 《光学精密工程》 EI CAS CSCD 北大核心 2014年第12期3435-3443,共9页 Optics and Precision Engineering
基金 国家自然科学基金资助项目(No.61174054)
关键词 磁共振图像分割 遗传算法 概率密度函数 主动轮廓模型 Magnetic Resonance(MR)image segmentation genetic algorithm probability density function active contour model
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  • 1曲怀敬,孙丰荣,李艳玲,刘泽,宫延新,张梅.基于活动轮廓模型和统计特征的血管内超声图像的边缘提取[J].中国图象图形学报,2005,10(8):999-1004. 被引量:10
  • 2赵春江,施文康,邓勇.基于遗传算法优化的多尺度形态边缘检测方法[J].计算机应用与软件,2007,24(4):38-40. 被引量:7
  • 3Gong M,Zhou Z, Ma J. Change detection in synthetic aper- ture radar images based on image fusion and fuzzy clustering [ J ]. IEEE Trans Image Processing, 2012,21 (4) : 2141 - 2151.
  • 4Celik T, Lee H K. Comments on "A robust fuzzy local infor- mation C- means clustering algorithm" [ J ]. IEEE Transac- tions on Image Processing,2013,22(3 ) :1258-1261.
  • 5Chunming Li' Chenyang Xu, Changfeng Gui, et al. Distance Regularized Level Set Evolution and Its Application to Im- age Segmentation [ J ]. IEEE Trans. On Image Processing, 2010,19(12) :3243-3254.
  • 6夏兴华,吴成东.一种新的基于Canny算法的自适应边缘提取方法[J].仪器仪表学报,2007,28(4):38-42.
  • 7Baselice F, Ferraioli G,Pascazio V.A Novel Statistical Approach for Brain MR Images Segmentation Based on Relaxation Times[J]. Biomed Res lnt 2015,2015( l ):154614.
  • 8Akhondi-Asl A,Warfield SK.Estimation of the Prior Distribution of Ground Truth in the STAPLE Algoritlma: An Empirical Bayesian Approach[A].Medical image computing and computer-assisted intervention:MICCAI[C]. Berlin:Springer,2012:593-600.
  • 9Serag A,Blesa M,Moore EJ,et al.Accurate Learning with Few Atlases (ALFA): an algorithm for MR/neonatal brain extraction and comparison with 11 publicly available methods[J].Sci Rep,2016,6:23470.
  • 10Tian Z,Liu L,Fei B.A supervoxel-based segmentation method for prostate MR images[ J].SPIE Med lmaging,2015,9413 :941318.

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