期刊文献+

改进的差分搜索算法的医学图像配准 被引量:3

Medical Image Registration via Modified Differential Search Algorithm
下载PDF
导出
摘要 基于互信息的医学图像配准具有精度高、鲁棒性强等特点,但互信息存在一定的局部极值,加上面对噪声图像时曲线往往不平滑,给优化过程带来了很大的困难。针对此问题,提出一种改进的差分搜索算法(modified differential search algorithm,MDSA),对交叉累计剩余熵(cross cumulative residual entropy,CCRE)进行寻优。该MDSA对原始差分搜索算法模型的搜索范围和迭代条件进行了改进,使得寻优过程更加稳定、高效。改进后的MDSA具有控制参数简单,不依赖于初始点选择,合理的搜索方向和边界控制策略等优势,有着优秀的全局和局部寻优能力。将该方法应用于医学图像刚体配准,结果证明MDSA相比差分搜索算法,能够有效地克服互信息函数存在的局部极值,提高了配准的成功率,具有较高的配准精度和较快的配准速度。 Mutual information-based medical image registration has the characteristics of high precision and robustness,but the mutual information has some local extremum.Additionally,the method is inefficient when facing to the noise images,which brings great difficulties to the optimization process.In order to solve this problem,a modified differential search algorithm(MDSA)is proposed to optimize the cross cumulative residual entropy(CCRE).The MDSA ameliorates the search method and the iterative conditions,which makes the optimization process more stable and efficient.The MDSA has the advantages of simple control parameters,no dependence on initial point selection,reasonable search direction and boundary control strategy and so on,which make MDSA have very powerful exploration and exploitation capabilities.In the experiment,the original DSA is added to the comparison with MDSA.The experimental results demonstrate the MDSA is suitable for rigid medical image registration in that MDSA not only overcomes the problem of local extrema,but also improves the speed and precision of registration.It is certified that the MDSA is an effective,robust,fast-speed automatic registration algorithm.
作者 桂鹏 邵党国 祝晓红 相艳 王硕 马磊 GUI Peng;SHAO Dangguo;ZHU Xiaohong;XIANG Yan;WANG Shuo;MA Lei(Faculty of Information Engineering and Automation,Kunming University of Science and Technology,Kunming 650504,China)
出处 《计算机科学与探索》 CSCD 北大核心 2019年第3期446-456,共11页 Journal of Frontiers of Computer Science and Technology
基金 国家自然科学基金81560296 云南省教育厅科学研究基金项目2015Y070 国家博士后面上科学基金项目2016M592894XB~~
关键词 医学图像配准 差分搜索算法 交叉累计剩余熵 智能计算 medical image registration differential search algorithm cross cumulative residual entropy computational intelligence
  • 相关文献

参考文献4

二级参考文献41

  • 1倪国强,刘琼.多源图像配准技术分析与展望[J].光电工程,2004,31(9):1-6. 被引量:81
  • 2杨帆,张汗灵.遗传算法和Poweli法结合的多分辨率三维图像配准[J].光电子.激光,2006,17(6):755-758. 被引量:19
  • 3卢振泰,陈武凡.医学图像配准算法研究[D].南方医科大学,2008.
  • 4PLUIM J P W, MANTZ J B A, VIERGEVER M A. Mutual information based registration of medical images: a survey [ J ]. IEEE Trans on Medical imaging ,2003,22( 8 ) :986-1004.
  • 5BURT P J ,ADELSON E H. The Laplacian pyramid as a compact im- age Gode[ J ]. IEEE Trans on Communication, 1983,31 (4) :337- 345.
  • 6] MALLAT S G. A theory for muhiresolution signal deempositim: the wavelet representation [ J ]. IEEE Trans on Pattern Analysis and Machine Intelligence, 1989,11 ( 7 ) :6?4-693.
  • 7STROTttER S C,ANDERSON J R, XLI X. Quantitive comparisons of image registration techniques based on high-resolutim: MRI of the brain[ J ]. Journal of Computer Assistant Tomography, 1994,18 (6) :954-962.
  • 8田莹,苑玮琦.遗传算法在图像处理中的应用[J].中国图象图形学报,2007,12(3):389-396. 被引量:43
  • 9LIU Haitao,WANG Yinlong,YAO Huifen.A new normalized-cut image segmentation algorithm based on watershed transforms[C]// 4th International Conference on Intelligent Information Technology Application(IITA),Hebei,Qin Huangdao,Nov 5,2010:5-7.
  • 10Jignesh Sarvaiya,Suprava Patnaik,Hemant Goklani.Image registration using NSCT and invariant moment[J].International Journal of Image Processing(S2419-1724),2010,4(2):119-130.

共引文献22

同被引文献20

引证文献3

二级引证文献8

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部