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邓雯倩, 李雪梅, 高希峰, 张彩明. 一种MRI脑部组织图像偏场校正和分割的FCM新算法[J]. 计算机科学技术学报, 2016, 31(3): 501-511. DOI: 10.1007/s11390-016-1643-5
引用本文: 邓雯倩, 李雪梅, 高希峰, 张彩明. 一种MRI脑部组织图像偏场校正和分割的FCM新算法[J]. 计算机科学技术学报, 2016, 31(3): 501-511. DOI: 10.1007/s11390-016-1643-5
Wen-Qian Deng, Xue-Mei Li, Xifeng Gao, Cai-Ming Zhang. A Modified Fuzzy C-Means Algorithm for Brain MR Image Segmentation and Bias Field Correction[J]. Journal of Computer Science and Technology, 2016, 31(3): 501-511. DOI: 10.1007/s11390-016-1643-5
Citation: Wen-Qian Deng, Xue-Mei Li, Xifeng Gao, Cai-Ming Zhang. A Modified Fuzzy C-Means Algorithm for Brain MR Image Segmentation and Bias Field Correction[J]. Journal of Computer Science and Technology, 2016, 31(3): 501-511. DOI: 10.1007/s11390-016-1643-5

一种MRI脑部组织图像偏场校正和分割的FCM新算法

A Modified Fuzzy C-Means Algorithm for Brain MR Image Segmentation and Bias Field Correction

  • 摘要: 准确的脑组织分割是脑部 MR 图像分析中非常关键的步骤, 是医学图像处理中关键问题和难点。由于脑部 MR 图像受到部分容积效应、噪声和偏场的影响, 准确分割脑部组织成为一项极具挑战性的任务。本文提出一种基于FCM 算法的脑部MR图像偏场校正和分割的新算法RCLFCM。首先, 该算法提出了一个新的邻域灰度差系数, 设计新的影响因子来衡量邻域点对中心像素的影响, 从而充分考虑像素的邻域信息, 减少噪声的影响。重新定义了 FCM 的目标函数, 并将偏场估计模型加入目标函数, 对MRI图像同时进行偏场校正和分割。同时结合像素间的灰度相似度和隶属度提出了一种新的空间函数构造方法, 充分利用 了像素间的空间信息, 用来更新模糊隶属度。本文将该分割算法用于 MRI合成脑部图像, 实验结果表明, 本文的算法能有效地估计偏场和抑制噪声, 获得比较精确的脑组织分割结果。

     

    Abstract: In quantitative brain image analysis, accurate brain tissue segmentation from brain magnetic resonance image (MRI) is a critical step. It is considered to be the most important and difficult issue in the field of medical image processing. The quality of MR images is influenced by partial volume effect, noise, and intensity inhomogeneity, which render the segmentation task extremely challenging. We present a novel fuzzy c-means algorithm (RCLFCM) for segmentation and bias field correction of brain MR images. We employ a new gray-difference coefficient and design a new impact factor to measure the effect of neighbor pixels, so that the robustness of anti-noise can be enhanced. Moreover, we redefine the objective function of FCM (fuzzy c-means) by adding the bias field estimation model to overcome the intensity inhomogeneity in the image and segment the brain MR images simultaneously. We also construct a new spatial function by combining pixel gray value dissimilarity with its membership, and make full use of the space information between pixels to update the membership. Compared with other state-of-the-art approaches by using similarity accuracy on synthetic MR images with different levels of noise and intensity inhomogeneity, the proposed algorithm generates the results with high accuracy and robustness to noise.

     

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