基于核加权FCM的MR图像分割在脑肿瘤检测中的应用

K. J. Francis, M. S. Godwin Premi
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引用次数: 5

摘要

提出了核加权分割的MRI脑诊断支持系统及其分析方法。该方法已用于自动分割MR图像中的正常组织和肿瘤等异常组织。磁共振图像经常被均匀性中的强度和伪影所破坏。这可能会影响用于脑图像分析的图像处理技术的性能。由于这类伪影和噪声的存在,在不知情的情况下,MRI中的一些正常组织可能会被误认为是其他类型的正常组织,从而导致诊断过程中的错误。该系统使用谱减去噪(SSD)方法去除给定图像中的噪声,并使用核加权模糊C均值(KWFCM)进行分割。该方法结合了空间信息,在考虑邻域内聚类分布的基础上,改变了每个聚类的隶属权重。论文结果将以不同参数评估的分割组织形式呈现,以显示算法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel weighted FCM based MR image segmentation for brain tumor detection
The paper presents MRI brain diagnosis support system for structure segmentation and its analysis using kernel weighted segmentation. The Proposed method has been used to segment normal tissues and abnormal tissue like tumor part of MR image automatically. MR images are often corrupted by Intensity in homogeneity and artifacts. This may affect the performance of image processing techniques used for brain image analysis. Due to this type of artifacts and noises unknowingly some normal tissue in MRI may be misclassified as other type of normal tissue and it leads to error during diagnosis process. The proposed system remove noise from the given images using a method called spectral subtraction de noising (SSD) and Kernel Weighted Fuzzy C Means (KWFCM) has been used for segmentation. This method incorporates spatial information and the membership weighting of every cluster has been altered after the cluster distribution in the neighborhood is considered. The paper results will be presented as segmented tissues with various parameter evaluations to show algorithm efficiency.
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