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基于互信息的多分辨率三维脑图像配准方法
引用本文:任海萍,吴文凯,杨虎,陈盛祖.基于互信息的多分辨率三维脑图像配准方法[J].生物医学工程学杂志,2002,19(4):599-601.
作者姓名:任海萍  吴文凯  杨虎  陈盛祖
作者单位:1. 中国协和医科大学,中国医学科学院,肿瘤医院,核医学科,北京,100021
2. 首都医科大学,生物医学工程系,北京,100054
基金项目:IAEA资助项目 ( CPR-110 35 )
摘    要:在3D多模医学图像的配准方法中,最大互信息法精度高,鲁棒性强,使用范围广,本文将归一化互信息作为相似性测度,采用不同的采样范围和采样子集,使用Powell多参数优化法和Brent一维搜索算法对3DCT,MR和PET脑图像进行了刚体配准,为了加快配准速度,使用了多分辨的金字塔方法,对PET图像采用基于坐标的阈值选取方法对图像进行分割预算法,消除了大部分放射状背景伪影,美国万德贝尔大学对结果进行的评估证明配准精度可达亚体元级。

关 键 词:脑图像  配准  归一化互信息  医学图像处理  刚体配准  生物医学工程  Brent一维搜索算法  Powell多参数优化法

Method of Multi-Resolution 3D Image Registration by Mutual Information
Haiping Ren,Wenkai Wu,Hu Yang,Shengzu Chen.Method of Multi-Resolution 3D Image Registration by Mutual Information[J].Journal of Biomedical Engineering,2002,19(4):599-601.
Authors:Haiping Ren  Wenkai Wu  Hu Yang  Shengzu Chen
Institution:Department of Nuclear Medicine, Cancer Hospital, Chinese Academy of Medical Sciences, Peking Union Medical College, Beijing 100021.
Abstract:Maximization of mutual information is a powerful criterion for 3D medical image registration, allowing robust and fully accurate automated rigid registration of multi-modal images in a various applications. In this paper, a method based on normalized mutual information for 3D image registration was presented on the images of CT, MR and PET. Powell's direction set method and Brent's one-dimensional optimization algorithm were used as optimization strategy. A multi-resolution approach is applied to speedup the matching process. For PET images, pre-procession of segmentation was performed to reduce the background artefacts. According to the evaluation by the Vanderbilt University, Sub-voxel accuracy in multi-modality registration had been achieved with this algorithm.
Keywords:Multi-modality    Brain image    Registration    Normalized mutual information  
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