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On Combination of Fuzzy Memberships for Medical Image Fusion using NSST based Fuzzy-PCNN

机译:基于NSST的Fuzzy-PCNN的医学图像融合模糊成员组合

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In this article the proposed Medical Image Fusion (MIF) technique uses combination of fuzzy membership values as input to Pulse Coupled Neural Network (PCNN). We named the used PCNN model as Fuzzy-PCNN as the inputs are fuzzy in nature. The spatially co-registered medical images are multi-modal in nature. After decomposing the source medical images using Non-Subsampled Shearlet Transform (NSST) low frequency subbands (LFSs) are fused using the max-selection rule. To fuse the high frequency subbands (HFSs), fuzzy memberships using multiple membership functions are generated from a specific local-region of the HFSs' coefficients. Then an L2norm based ensembling operation is applied to find out the resultant of them. These resultant fuzzy memberships are used as input of PCNN. Inverse NSST (INSST) is applied to the fused coefficients to get the fused image. Visual and quantitative analysis and comparisons with state-of-the-art MIF techniques show the effectiveness of the proposed scheme.
机译:在本文中,提出的医学图像融合(MIF)技术使用模糊隶属度值的组合作为脉冲耦合神经网络(PCNN)的输入。我们将使用的PCNN模型命名为Fuzzy-PCNN,因为输入实际上是模糊的。在空间上相互配准的医学图像本质上是多模式的。在使用非二次采样的Shearlet变换(NSST)分解源医学图像之后,使用最大选择规则融合低频子带(LFS)。为了融合高频子带(HFS),会从HFS系数的特定局部区域生成使用多个隶属函数的模糊隶属关系。然后,应用基于L2norm的组合操作来找出它们的结果。这些结果模糊隶属度用作PCNN的输入。将反NSST(INSST)应用于融合系数以获取融合图像。视觉和定量分析以及与最先进的MIF技术的比较表明了该方案的有效性。

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