吉林大学学报(理学版) ›› 2026, Vol. 64 ›› Issue (3): 581-0590.

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基于边界感知与特征融合的病理图像分割网络

陈海鹏1, 孔鸣1, 张洪语1, 孙宝胜2   

  1. 1. 吉林大学 计算机科学与技术学院, 长春 130012; 2. 吉林省肿瘤医院 放疗科, 长春 130012
  • 收稿日期:2025-02-24 出版日期:2026-05-26 发布日期:2026-05-26
  • 通讯作者: 孙宝胜 E-mail:1575164354@qq.com

Pathological Image Segmentation Network Based on Boundary-Aware and Feature Fusion#br#

CHEN Haipeng1, KONG Ming1, ZHANG Hongyu1, SUN Baosheng2   

  1. 1. College of Computer Science and Technology, Jilin University, Changchun 130012, China;
    2. Department of Radiotherapy, Jilin Province Cancer Hospital, Changchun 130012, China
  • Received:2025-02-24 Online:2026-05-26 Published:2026-05-26

摘要: 针对病灶形态多样性引发的病理图像识别精度不足及特征融合过程中的语义鸿沟问题, 提出一种融合Transformer与注意力机制的改进型U-Net架构. 首先, 设计边界感知模块强化病理图像的病灶边缘特征表达, 提升模型对复杂结构的感知能力; 其次, 在瓶颈层引入正则化大核注意力模块以建模长程依赖, 并通过逐层正则化策略缓解过拟合风险; 最后, 进一步引入可学习的视觉中心模块, 增强全局与局部特征之间的互补. 在数据集MoNuSeg和GlaS上的实验结果表明, 该方法在分割精度、 边界清晰度方面均优于当前主流模型. 

关键词: 边界感知, 特征融合, 病理图像, 图像分割, 卷积神经网络, Transformer架构

Abstract: Aiming at the problems of insufficient accuracy of pathological image recognition and semantic gaps in feature fusion process caused by the diversity of lesion morphology, we proposed an improved U-Net architecture that integrated Transformer and attention mechanisms. Firstly, we designed a boundary-aware module to enhance the expression of lesion edge features in pathological images, thereby improving the model’s ability to perceive complex structures. Secondly, we introduced a regularized large-kernel attention module at the bottleneck layer to model long-range dependencies, and mitigated overfitting risk through a layer-wise regularization strategy. Finally, we further introduced a learnable visual center module to strengthen the complementarity between global and local features. Experimental results on the MoNuSeg and GlaS datasets show that the proposed method outperforms current mainstream models in terms of segmentation accuracy and boundary clarity.

Key words: boundary-aware, feature fusion, pathological image, image segmentation, convolutional neural network, Transformer architecture 

中图分类号: 

  • TP391.4