Multi-modality registration by using mutual information with honey bee mating optimization (HBMO)

Chih-Hsun Lin, Chung-I Huang, Yung-Nien Sun, M. Horng
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引用次数: 1

Abstract

Registration is a popular technique commonly used in medical image processing. In this paper, we propose a new registration algorithm which uses the mutual information (MI) as the similarity measurement function and utilizes a new optimization algorithm, called honey bee mating optimization (HBMO), to obtain the optimal registration. By simulating the biological evolution, HBMO can obtain a set of optimized parameters for registration with the largest similarity measure. By applying the proposed method to medical images, the experimental results showed that the method achieved better accuracy in registration than the conventional Powell's optimization method which is the most commonly used method in medical image registration. Also, the proposed method remained stable and accurate during the experiment of using several different source images. With each source image, we calculated mean ± SD of the parameters by repeating twenty times.
基于互信息的多模态配准与蜜蜂交配优化
配准是医学图像处理中常用的一种技术。本文提出了一种新的配准算法,该算法以互信息(MI)作为相似性度量函数,并利用一种新的优化算法——蜜蜂交配优化算法(HBMO)来获得最优配准。HBMO通过模拟生物进化,获得一组具有最大相似性测度的优化配准参数。将该方法应用于医学图像,实验结果表明,与医学图像配准中最常用的鲍威尔优化方法相比,该方法的配准精度更高。同时,在多幅不同源图像的实验中,该方法仍然保持稳定和准确。对每个源图像重复20次,计算参数的均值±SD。
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