Multimodal medical image fusion using residual network 50 in non subsampled contourlet transform

K. Koteswara Rao, K. Veera Swamy
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引用次数: 0

Abstract

ABSTRACT Medical image fusion technology and its collective diagnosis are becoming crucial day by day. This task confers the latest algorithm for image fusion of medical images to many diagnostic complications. Firstly, transform is employed on input source images. The result of the application of transform is the decomposition of source images into various subbands. Eminent features are extracted from these subbands by using resnet50. These features are fused by phase congruency and guided filtering fusion rules. Finally, inverse transform gives the original image. The experiment results of this algorithm are compared with different methods by taking some pairs of medical images. Subjective and objective outcomes prove that the proposed algorithm exceeds the current methods by giving optimal performance measures in the area of medical diagnosis. Thus, it is revealed that the suggested multimodal image fusion model provides elevated performance over existing models via diverse diseases using MRI-SPECT and MRI-PET.
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非下采样contourlet变换残差网络50多模态医学图像融合
医学图像融合技术及其集体诊断日益重要。该任务为许多诊断性并发症的医学图像融合提供了最新的算法。首先,对输入源图像进行变换。变换的应用结果是将源图像分解成不同的子带。利用resnet50从这些子带中提取显著特征。这些特征通过相位一致性和引导滤波融合规则进行融合。最后进行反变换得到原始图像。通过对医学图像的实验,比较了该算法与不同方法的实验结果。主观和客观结果证明,该算法在医学诊断领域给出了最优的性能指标,超越了现有的方法。因此,研究表明,所建议的多模态图像融合模型比使用MRI-SPECT和MRI-PET检测不同疾病的现有模型具有更高的性能。
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