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Multimodal medical image fusion based on nonsubsampled contourlet transform using improved PCNN

机译:基于改进PCNN的非下采样contourlet变换的多模态医学图像融合

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Multimodal medical image fusion is an indispensable branch in the field of image fusion. In order to obtain a more complete and more reliable medical image, this paper presents a novel approach for multimodal medical image fusion using an improved pulse-coupled neural network (IPCNN) in nonsubsampled contourlet transform (NSCT) domain. First, the image is decomposed into sub-bands with different scales and different directions by NSP and NSDFB. Next, local area singular value is introduced to determine the structural information factor which will be the linking strength parameter of PCNN. After the fire process we can get the fire mapping images that can reflect the characteristics of single pixel and its neighborhood. Then, we extract the objects with salient features of the fire mapping images by compare-selection operator. Finally, we construct the fused image by inverse NSCT. Our proposed algorithm in multimodal medical image fusion is proved to perform better in robustness and reliability over the existing methods, meeting the requirement of human vision.
机译:多式化医学图像融合是图像融合领域的不可或缺的分支。为了获得更完整和更可靠的医学图像,本文介绍了使用改进的脉冲耦合的神经网络(NOSCT)域(NSCT)域中的改进脉冲耦合神经网络(IPCNN)的多模式医学图像融合的新方法。首先,通过NSP和NSDFB将图像分解成具有不同尺度和不同方向的子带。接下来,引入局部区域奇异值以确定将是PCNN的链接强度参数的结构信息因子。在消防过程之后,我们可以获得可以反映单像素及其邻域的特征的火灾映射图像。然后,我们通过比较选择操作员提取具有火灾映射图像的突出特征的对象。最后,我们通过逆NSCT构建融合图像。我们在多模式医学图像融合中提出的算法被证明可以更好地对现有方法进行更好的鲁棒性和可靠性,满足人类视力的要求。

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