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Multimodal medical image fusion review: Theoretical background and recent advances

机译:多模式医学图像融合综述:理论背景和最近的进展

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摘要

Multimodal medical image fusion consists in combining two or more images of the same or different modalities aiming to improve the image content, and preserve information. The rapid advance in medical imaging techniques (Computed Tomography (CT), Positron Emission Tomography (PET), Magnetic Resonance Imaging (MR1), Single Photon Emission Computed Tomography (SPECT)) has attracted researcher's attention to fuse different modalities in order to assist experts decision making during the aided-diagnosis pipeline. Moreover, the fused results may help boosting other tasks such as classification, detection and segmentation. The main objective of this work is to provide a comprehensive overview of medical image fusion methods with theoretical background and recent advances. To do so, we present a detailed literature panorama of medical image fusion. The pixel-level, feature-level and decision-level fusion methods are highlighted and discussed with several approaches in each category. Theories behind fusion algorithms are explored aiming to address challenges and limitations of each classes. Therefore, we propose an experimental analysis of fusion performance given by different categories to guide the discussion. By summarizing the existing fusion classes, we discuss merits and demerits of each category to provide some recommendations for future research directions. Finally, performance evaluation metrics are presented to draw conclusions and perspectives.
机译:多模式医学图像融合包括组合用于改善图像内容的相同或不同模式的两个或更多个图像,并保留信息。医学成像技术的快速提前(计算机断层扫描(CT),正电子排放断层扫描(PET),磁共振成像(MR1),单光子排放计算断层扫描(SPECT))引起了研究人员的注意,以帮助专家融合不同的方式在辅助诊断管道期间的决策。此外,融合结果可能有助于提高其他任务,例如分类,检测和分割。这项工作的主要目标是提供具有理论背景和最近进步的医学图像融合方法的全面概述。为此,我们提供了一份详细的医学图像融合文学全景。突出显示像素级,特征级别和决策级融合方法,并讨论了每个类别中的几种方法。融合算法后面的理论旨在解决每个课程的挑战和局限性。因此,我们提出了不同类别给出的融合性能的实验分析来指导讨论。通过总结现有的融合课程,我们讨论每个类别的优点和缺点,以便为未来的研究方向提供一些建议。最后,提出了绩效评估指标以得出结论和观点。

著录项

  • 来源
    《Signal processing》 |2021年第6期|108036.1-108036.27|共27页
  • 作者单位

    University of Tunis El Manar Intelligent Systems in Imaging and Artificial Vision (SUVA) Laboratory of Informatics Modeling and Information and Knowledge Processing (LIMT1C) Higher Institute of Computer Science Ariana Tunisia;

    University of Tunis El Manar Intelligent Systems in Imaging and Artificial Vision (SUVA) Laboratory of Informatics Modeling and Information and Knowledge Processing (LIMT1C) Higher Institute of Computer Science Ariana Tunisia;

    University of Tunis El Manar Intelligent Systems in Imaging and Artificial Vision (SUVA) Laboratory of Informatics Modeling and Information and Knowledge Processing (LIMT1C) Higher Institute of Computer Science Ariana Tunisia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multimodal medical image fusion; Multi-scale geometric decomposition; Deep learning; Fuzzy logic; Sparse representation; Evaluation metrics;

    机译:多式化医学图像融合;多尺寸几何分解;深度学习;模糊逻辑;稀疏表示;评估指标;

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