刺激PCNN的NSST域局部ifs -熵医学图像融合

N. S. Mishra, Supriya Dhabal
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引用次数: 0

摘要

提出了一种新的多模态图像融合技术。它基于直觉模糊集(IFS),在非下采样Shearlet变换域上进行操作。对两幅输入图像进行分解后,利用最大选择规则进行低频子带融合。在融合高频子带(HFSs)时,考虑高频子带系数的局部邻域产生IFS熵。这些IFS熵被用作生物启发的脉冲耦合神经网络的刺激输入。根据网络的(较高的)发射计数,hfs被融合。最后,以融合系数为输入,进行反NSST得到融合图像。通过与现有多模态医学融合技术的数值比较,评价了该技术的优越性。
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Medical Image Fusion using Local IFS-Entropy in NSST Domain by Stimulating PCNN
This paper proposes a new multi-modal image fusion technique for medical application. It is based on the Intuitionistic Fuzzy Set (IFS) and operated on the Non-Subsampled Shearlet Transform domain. After decomposition of two input images, the fusion of low-frequency subbands (LFSs) are performed using max-selection rule. While fusing the high-frequency subbands (HFSs), IFS entropy is generated considering a local neighbor-hood region of the HFSs’ coefficients. These IFS entropies are used as stimulating input to a biologically inspired Pulse Coupled Neural Network. Depending upon the (higher) firing counts of the network, the HFSs are fused. Finally, to yield the fused image, inverse NSST is performed taking the fused coefficients as its input. Superiority of the present technique is evaluated through some numerical comparisons with already existing techniques in the multi-modal medical fusion domain.
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