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昆明冶金高等专科学校学报 ›› 2025, Vol. 41 ›› Issue (1): 53-.DOI: 10.3969/j.issn.1009-0479.2025.01.008

• 电子信息技术 • 上一篇    

基于改进 PCNN与核范数能量的医学图像融合研究

  

  1. 昆明冶金高等专科学校电气与机械学院,云南 昆明 65003
  • 收稿日期:2024-05-25 出版日期:2025-02-07 发布日期:2025-09-28
  • 作者简介:杨 青 (1986-),女,湖南邵阳人,讲师,工学硕士,主要从事基于神经网络图像处理研究。

Research on Medical mage Fusion Based on mprovedPCNN and Nuclear Norm Energy

  1.  Faculty of Electrical and Mechanical Engineering, Kunming Metallurgy College, Kunming 650033, China
  • Received:2024-05-25 Online:2025-02-07 Published:2025-09-28
  • Supported by:
    云南省教育厅科学研究基金项目 “基于多尺度变换与 PCNN的多模态图像融合方法研究”(2024J1362)。

摘要: 现有医学图像融合方法,存在能量丢失、纹理不清等问题。针对此问题,提出在 NSST多尺度下,利用 改进的脉冲耦合神经网络 PCNN与核能分别融合高低频系数。首先对多模态医学图像进行 NSST分解得到源图像 的高低频系数;接着利用改进的 PCNN融合分解后的高频系数,利用核范数能量融合低频系数,其中,改进的 PCNN利用高斯滤波器组合周围神经元,链接强度自适应化取得,大大减少了需人工设定的参数;最后,经过 NSST逆变换得到融合图像。随机选取 6组图像进行融合实验与对比实验,结果表明,该方法不仅在视觉上效果 更好,在 7个客观指标上,也表现优秀。

关键词: 医学图像融合, 非下采剪切波变换, 脉冲耦合神经网络, 高斯滤波器, 核范数能量

Abstract: The existing medical image fusion methods suller from issues such as energy loss and unclealtextures. To address these problems , this paper proposes a method that separately fuses the high and low.frequeney coefficients in the NSS'T domain using an improved pulse coupled neural network ( PCNN) andnuclear energy. First, multimodal medical images undergo NSST decomposition to obtain the high andlow-frequeney coelficients of the source images. Then, the improved PCNN is employed to fuse the de-composed high-frequeney coelficients, while nuclear energy is used to fuse the low-frequeney coelficients.In the improved PCNN , a Gaussian filter is used to combine surrounding neurons, and the link strength isadaptively adjusted, greatly reducing the need for manually setting parameters. Finally , the fused imagesis obtained through NSST inverse transformation. Six sets of images are randomly selected for fusion andcomparative experiments. The results show that this method not only achieves superior visual performancebut also performs excellently across seven objective evaluation metrics.

Key words: medical image fusion, NSST, improved PCNN, Gaussian filter, nuclear normenergy