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基于马尔科夫约束最大后验概率三维显微图像复原算法
引用本文:陈华,金伟其,苏秉华,王霞.基于马尔科夫约束最大后验概率三维显微图像复原算法[J].北京理工大学学报,2006,26(7):634-638.
作者姓名:陈华  金伟其  苏秉华  王霞
作者单位:1. 北京理工大学,信息科学技术学院光电工程系,北京,100081;广西大学,计算机与电子信息学院,广西,南宁,530004
2. 北京理工大学,信息科学技术学院光电工程系,北京,100081
基金项目:高等学校博士学科点专项科研项目
摘    要:提出了基于马尔科夫约束的最大后验概率三维显微图像复原算法(3D MPMAP算法). 该算法根据显微图像三维的特点,构造三维PSF,对二维邻域进行三维拓展,对正则化参量进行简化,实现了三维显微图像的复原. 实验结果表明,各种信噪比的仿真三维显微图像的散焦信息干扰得到很大程度的排除,复原图像频谱得到较大的恢复,清晰度明显提高. 实际生物样本三维显微图像也获得了满意的复原效果.

关 键 词:图像复原  三维显微图像  MPMAP算法  三维点扩散函数  马尔科夫  约束  后验概率  三维显微图像  图像复原  算法  Microscopy  Constraint  Markov  Restoration  复原效果  生物样本  清晰度  恢复  图像频谱  程度  信息干扰  散焦  仿真  信噪比
文章编号:1001-0645(2006)07-0634-05
收稿时间:11 24 2005 12:00AM
修稿时间:2005年11月24日

Maximum a Posteriori Restoration with Markov Constraint for Three-Dimensional Optical-Sectioning Microscopy
CHEN Hu,JIN Wei-qi,SU Bing-hua and WANG Xia.Maximum a Posteriori Restoration with Markov Constraint for Three-Dimensional Optical-Sectioning Microscopy[J].Journal of Beijing Institute of Technology(Natural Science Edition),2006,26(7):634-638.
Authors:CHEN Hu  JIN Wei-qi  SU Bing-hua and WANG Xia
Institution:1. Department of Optical Engineering, School of Information Science and Technology, Beijing Institute of Technology, Beijing 100081, China; 2. School of Computer and Electronics and Information, Guangxi University, Nanning, Guangxi 530004, China
Abstract:Maximum a posteriori 3D restoration algorithm(3D MPMAP) with Markov constraint for three-dimensional optical-sectioning microscopy is proposed.According to the 3D feature of the microscopic image,3D point-spread-function is made,2D neighborhood is continued to 3D and the regularization parameter is simplified.As a result,the restoration of 3D microscopic image is achieved.Experimental results showed that the disturbance from out-of-focus signals is suppressed greatly in simulated microscopic images with different signal-to-noise ratio,and the spectra of the restored images are recovered greatly,the definition is improved obviously,and better effect in image restoration is reached for the microscopic images of actual biological specimens.
Keywords:image restoration  3D microscopic image  MPMAP algorithm  3D point-spread-function
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