An effective tree metrics graph cut algorithm for MR brain image segmentation and tumor Identification

N. Saravanan, G. Vishnuvarthanan, M. Pallikondarajasekaran
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引用次数: 1

Abstract

The proposed algorithm describes the problem of Magnetic Resonance (MR) brain image segmentation using the tree-metric graph cuts (TM) algorithm, a novel segmentation algorithm and introducing a “tree-cutting” method to interpret the labeling returned by the TM algorithm as tissue classification for the input brain MR brain image. The algorithm has three sequential steps: 1) pre-processing, which generates a tree of labels as key to the TM algorithm; 2) a sweep of the TM algorithm, which proceeds a globally optimal labeling with respect to the tree of labels; 3) post-processing, which involves running the “tree-cutting” method to generate a mapping from labels to brain tissues such as Grey Matter (GM), White Matter (WM) and Cerebrospinal Fluid (CSF) producing a meaningful MR brain image segmentation. On comparison with the current approaches, the result obtained shows that the tree metrics graph cut algorithm is faster and the overall segmentation accuracy is better for segmenting both T1 and T2 weighted MR axial brain slice images.
一种有效的脑磁共振图像分割与肿瘤识别的树度量图切算法
该算法描述了一种新的分割算法——树-度量图切割(TM)算法对磁共振(MR)脑图像的分割问题,并引入了一种“树-切割”方法,将TM算法返回的标记解释为输入脑MR脑图像的组织分类。该算法有三个连续的步骤:1)预处理,生成标签树作为TM算法的关键;2)对TM算法进行扫描,对标记树进行全局最优标记;3)后处理,包括运行“树木切割”方法,生成从标签到大脑组织的映射,如灰质(GM),白质(WM)和脑脊液(CSF),从而产生有意义的MR脑图像分割。结果表明,树度量图切算法对T1和T2加权MR轴向脑切片图像的分割速度更快,整体分割精度更高。
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