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结合Shearlet变换和果蝇优化算法的甲状腺图像融合
引用本文:郑伟,孙雪青,郝冬梅,吴颂红.结合Shearlet变换和果蝇优化算法的甲状腺图像融合[J].四川激光,2014(9):70-73.
作者姓名:郑伟  孙雪青  郝冬梅  吴颂红
作者单位:1. 河北大学电子信息工程学院,河北保定 071002; 河北省数字医疗工程重点实验室,河北保定 071002
2. 河北大学附属医院,河北保定,071002
基金项目:河北省教育厅科学研究计划项目(2010218);河北大学医工交叉研究中心开放基金项目
摘    要:针对甲状腺肿瘤超声图像复杂度高和SPECT图像边界模糊的特点,结合Shearlet变换能够捕捉图像细节信息和果蝇优化算法可靠性高的优势,提出了Shearlet变换和果蝇优化算法相结合的图像融合算法。首先,用Shearlet变换对已精确配准的源图像进行分解,分别得到高低频子带系数。高频子带系数采用区域能量取大的融合规则,低频子带系数使用改进的加权融合规则,并把果蝇优化算法引入低频融合过程,以互信息作为适应度函数来获取最优值,克服了原加权融合算法互信息低的缺点。最后,用Shearlet逆变换得到融合后的图像。实验结果表明,此算法在主观视觉效果和客观评价指标上优于其他融合算法。

关 键 词:图像处理  图像融合  Shearlet变换  改进的加权融合  果蝇优化算法  区域能量

Thyroid Image Fusion Based on Shearlet Transform and Fruit Fly Optimization Algorithm
ZHENG Wei,SUN Xue-qing,HAO Dong-mei,WU Song-hong.Thyroid Image Fusion Based on Shearlet Transform and Fruit Fly Optimization Algorithm[J].Laser Journal,2014(9):70-73.
Authors:ZHENG Wei  SUN Xue-qing  HAO Dong-mei  WU Song-hong
Affiliation:ZHENG Wei, SUN Xue-qing, HAO Dong-mei, WU Song-hong (1.College of Electronic and Information Engineering, Hebei University, Baoding Hebei 071002, China; 2.Key Laboratory of Hebei on Digital Medical Engineering, Baoding Hebei 071002, China; 3.Affiliated hospital of Hebei University, Baoding Hebei 071002, China)
Abstract:According to the characteristics of ultrasound images with high complexity and SPECT image with blurred boundary, combining the advantage of the Shearlet transform can capture the detail information of images and the high reliability of the Fruit Fly Optimization Algorithm, an image fusion algorithm based on Shearlet trans-form and Fruit Fly Optimization Algorithm is proposed. Firstly, the Shearlet transform is used to decompose the reg-istered source images, thus the low frequency sub-band coefficients and high frequency sub-band coefficients can be obtained. The high frequency sub-band coefficients are fused by the region energy maximum. The fusion rule of the low frequency sub-band coefficients is based on the method of modified weighted fusion, in order to overcome the disadvantage of low mutual information in primary weighted fusion algorithm, the Fruit Fly Optimization Algorithm is introduced in fusion process, the mutual information as fitness function is used to calculate the optimum solution. Finally, the fused image is reconstructed by inverse Shearlet transform. The experimental results demonstrate that the proposed method outperforms the other methods in term of visual evaluation and objective evaluation.
Keywords:Image processing  Image fusion  Shearlet transform  Modified weighted fusion  Fruit Fly Optimiza-tion Algorithm  Region energy
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