Multimodal Medical Image Fusion Using Modified PCNN Based on Linking Strength Estimation by MSVD Transform

H. Ouerghi, Olfa Mourali, E. Zagrouba
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引用次数: 6

Abstract

In this paper, we propose a novel multimodal MRI and CT images fusion method based on Multi-resolution Singular Value Decomposition (MSVD) and Modified Pulse Coupled Neural Network (MPCNN).Firstly, the input pre-registered MRI and CT images are decomposed into high frequency (HF) and low frequency (LF) sub-bands by using the MSVD transform. Then, the MPCNN model is applied on each LF sub-bands. The proposed method can adaptively determine the linking strength of the MPCNN model. After that, LF coefficients are combined based on the output of MPCNN coefficients while HF coefficients are fused by using the maximum selection rule. Finally, the inverse MSVD is applied to reconstruct the fused image. Visual effect and objective evaluation criteria are used to evaluate the performance of our approach for nine pairs of MRI and CT images. The experimental results demonstrate that the proposed method has a better performance than other current methods.
基于MSVD变换链接强度估计的改进PCNN多模态医学图像融合
本文提出了一种基于多分辨率奇异值分解(MSVD)和改进脉冲耦合神经网络(MPCNN)的多模态MRI与CT图像融合方法。首先,利用MSVD变换将输入的预配准MRI和CT图像分解为高频(HF)和低频(LF)子带;然后,将MPCNN模型应用于低频各子带。该方法可以自适应地确定MPCNN模型的连接强度。然后根据MPCNN系数的输出对低频系数进行组合,利用最大选择规则对高频系数进行融合。最后,利用逆MSVD对融合后的图像进行重构。采用视觉效果和客观评价标准对9对MRI和CT图像进行了评价。实验结果表明,该方法比现有方法具有更好的性能。
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