Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (5): 1677-1683.DOI: 10.11772/j.issn.1001-9081.2025050632

• Frontier and comprehensive applications • Previous Articles    

Fine-grained Chinese herbal medicine image classification based on feature fusion and channel information compensation

Xinyao LIU1, Jun LIANG1, Jiahao LONG1, Renliang YAN2()   

  1. 1.School of Artificial Intelligence,South China Normal University,Foshan Guangdong 528225,China
    2.School of Traditional Chinese Medicine,Guangdong Food and Drug Vocational College,Guangzhou Guangdong 510520,China
  • Received:2025-06-09 Revised:2025-07-10 Accepted:2025-07-18 Online:2025-08-01 Published:2026-05-10
  • Contact: Renliang YAN
  • About author:LIU Xinyao, born in 1998, M. S. candidate. Her research interests include image classification, pattern recognition.
    LIANG Jun, born in 1983, Ph. D., lecturer. His research interests include graph theory, application of artificial intelligence.
    LONG Jiahao, born in 2000, M. S. candidate. His research interests include deep learning, video stabilization.
  • Supported by:
    Guangdong Basic and Applied Basic Research Foundation(2022A1515140110);Foshan Higher Education High-Level Talent Project(303480);Guangdong Food and Drug Vocational College College-level Quality Project(2024JG10);Guangdong Food and Drug Vocational College College-level Natural Science Project(2023ZR03)

基于特征融合和通道信息补偿的中草药细粒度图像分类

刘馨瑶1, 梁军1, 龙嘉濠1, 颜仁梁2()   

  1. 1.华南师范大学 人工智能学院,广东 佛山 528225
    2.广东食品药品职业学院 中药学院,广州 510520
  • 通讯作者: 颜仁梁
  • 作者简介:刘馨瑶(1998—),女,山西大同人,硕士研究生,主要研究方向:图像分类、模式识别
    梁军(1983—),男,江西高安人,讲师,博士,主要研究方向:图论、人工智能应用
    龙嘉濠(2000—),男,广东广州人,硕士研究生,主要研究方向:深度学习、视频防抖
  • 基金资助:
    广东省基础与应用基础研究基金资助项目(2022A1515140110);佛山市高等教育高层次人才项目(303480);广东食品药品职业学院校级质量工程资助项目(2024JG10);广东食品药品职业学院校级自然科学项目(2023ZR03)

Abstract:

In the field of fine-grained image classification of Chinese herbal medicine, the lack of a comprehensive and balanced dataset has been a major obstacle. To advance research on fine-grained image recognition of Chinese herbal medicine, a Herb-150 fine-grained Chinese herbal medicine dataset was constructed, with balanced sample distribution and comparable counts per category. To address the issue of deep neural networks easily losing discriminative, detailed features in this task, a fine-grained feature-enhanced CHMRN (Chinese Herbal Medicine Recognition Network) was proposed. By introducing a top-down feature fusion module, it integrated multi-scale semantic information to capture comprehensive contextual features. Additionally, a bottom-up channel feature information compensation module was designed to enhance the expressive power of fine-grained features, ensuring the accurate capture of subtle differences among traditional Chinese medicine categories. Experimental results showed that CHMRN achieved an accuracy of 93.910% on the Herb-150 dataset, outperforming mainstream models such as CMAL-Net (Cross-layer Mutual Attention Learning Network), validating its effectiveness in fine-grained classification tasks. The CHMRN not only improves the accuracy of traditional Chinese medicine identification, but also provides valuable references for similar fine-grained image classification applications.

Key words: deep learning, fine-grained image classification, Chinese herbal medicine, feature extraction, feature fusion

摘要:

在传统中草药细粒度图像分类领域,缺乏一个全面且平衡的数据集。为推进中草药细粒度图像识别研究,构建了Herb-150细粒度中草药数据集,该数据集样本分布均衡且每个类别包含数量相当的样本。针对中草药细粒度图像识别任务中深层神经网络易丢失判别性细节特征的问题,提出细粒度特征增强的CHMRN(Chinese Herbal Medicine Recognition Network),通过引入自顶向下的特征融合模块整合多尺度语义信息捕捉全面的上下文特征;同时,设计自底向上的通道特征信息补偿模块,以增强细粒度特征的表达能力,确保准确捕捉中药类别之间的细微差异。实验结果表明,CHMRN在Herb-150数据集上的准确率达到93.910%,优于对比的CMAL-Net(Cross-layer Mutual Attention Learning Network)等主流模型,验证了它在细粒度分类任务中的有效性。CHMRN不仅提高了传统中药识别的准确性,还能为类似的细粒度图像分类应用提供参考。

关键词: 深度学习, 细粒度图像分类, 中草药, 特征提取, 特征融合

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