Multimodal Medical Image Fusion based on the VGG19 Model in the NSCT Domain

ChunXiang Liu, Yuwei Wang, Tianqi Cheng, Xinping Guo, Lei Wang
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Abstract

Aim: To deal with the drawbacks of the traditional medical image fusion methods, such as the low preservation ability of the details, the loss of edge information, and the image distortion, as well as the huge need for the training data for deep learning, a new multi-modal medical image fusion method based on the VGG19 model and the non-subsampled contourlet transform (NSCT) is proposed, whose overall objective is to simultaneously make the full use of the advantages of the NSCT and the VGG19 model. Methodology: Firstly, the source images are decomposed into the high-pass and low-pass subbands by NSCT, respectively. Then, the weighted average fusion rule is implemented to produce the fused low-pass sub-band coefficients, while an extractor based on the pre-trained VGG19 model is constructed to obtain the fused high-pass subband coefficients. Result and Discussion: Finally, the fusion results are reconstructed by the inversion transform of the NSCT on the fused coefficients. To prove the effectiveness and the accuracy, experiments on three types of medical datasets are implemented. Conclusion: By comparing seven famous fusion methods, both of the subjective and objective evaluations demonstrate that the proposed method can effectively avoid the loss of detailed feature information, capture more medical information from the source images, and integrate them into the fused images.
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基于NSCT域VGG19模型的多模态医学图像融合
目的:来处理传统的医学图像融合方法的缺点,如低的细节保护能力,边缘信息的损失,和图像失真,以及巨大的深度学习的训练数据,需要一个新的综合医学图像融合方法基于VGG19模型和non-subsampled contourlet变换(NSCT)提出的总体目标是同时充分利用NSCT的优点和VGG19模型。方法:首先,采用NSCT将源图像分别分解为高通和低通子带;然后,采用加权平均融合规则生成融合后的低通子带系数,并基于预训练的VGG19模型构建提取器获得融合后的高通子带系数。结果与讨论:最后,通过NSCT对融合系数的反演变换重建融合结果。为了验证该方法的有效性和准确性,在三种类型的医学数据集上进行了实验。结论:通过对比7种著名的融合方法,主观和客观评价均表明本文方法能有效避免详细特征信息的丢失,从源图像中捕获更多的医学信息,并将其融合到融合图像中。
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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