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昆明冶金高等专科学校学报 ›› 2025, Vol. 41 ›› Issue (05): 52-.DOI: 10.3969/j.issn.1009-0479.2025.05.009

• 电子信息技术 • 上一篇    下一篇

基于信息熵 Transformer网络的茶叶病害检测方法

  

  1. 1.昆明冶金高等专科学校计算机信息学院,云南 昆明 650033;2.玉溪市气象局,云南 玉溪 65310
  • 出版日期:2025-10-01 发布日期:2026-03-25
  • 作者简介:张 浩 (1992-),男,云南昆明人,讲师,工学硕士,主要从事深度学习与生物信息学研究。

Tea Disease Detection Method Based on InformationEntropy-Enhanced Transformer Network

  1. 1.Faculty of Computer Information, Kunming Metallurgy College, Kunming 650033, China;2. Yuxi Meteorological Bureau, Yuxi 653100 China)
  • Online:2025-10-01 Published:2026-03-25

摘要: 茶叶在其生长周期中面临着红叶斑病、藻斑病、炭疽病等多种病害的威胁。手工检查方法难以实现精确识别,导致错过最佳的干预时机。针对这一难题,本研究提出了一种结合自监督学习和信息熵加权机制的Transformner神经网络模型:首先对训练数据集中的每张茶叶图像进行75%的随机掩膜处理,利用自监督学习范式从未遮盖的区域提取特征,并精确预测被遮盖区域的信息;基于此过程得到的预训练模型,采用迁移学习方法构建茶叶病害检测模型,通过增加信息熵加权策略,有效增强了模型对图像中最重要信息区域的关注度,从而大幅提升了茶叶病害识别的准确性。实验证明,即使是在有限的数据集上训练,检测模型仍能实现93.7%的检测精度,显著超越了ResNet18、VGG16、VGG19主流深度学习算法。此外,本研究提出的模型还展现了出色的适应性和迁移能力,意味着其同样适用于其他作物病害的预警系统。

关键词: 茶叶病害, 自监督学习, 信息熵, Transformer, 深度学习

Abstract: Tea plants face from multiple disease threats during their growth cyele, such as red leaf spot,algae spot, and anthracnose. Manual inspection methods struggle to achieve accurate identification, lead-ing to the loss of optimal intervention timing. To address this challenge, this study proposes a Transformerneural network model integrating self-supervised learning and an information entropy weighting mecha-nism. First, each tea leaf image in the training dataset was subjected to 75% random masking. Using theself-supervised leaming paradigm, the model extracted features from unmasked regionsand accurately pre-dicts information in masked regions. Based on this pre-trained model, a tea disease detection model wasconstructed via transfer learning. By incorporating an information entropy weighting strategy, the detec-tion model effectively enhances its attention to the most informativeregions in images, thereby significantlyimproving the accuracy of tea disease recognition. Experimental results show that even when trained on alimited dataset, the proposed model achieves a detection accuracy of 93. 7% , significantly outperformingmainstream deep learning algorithms such as ResNet18, VGG16, and VGG19. Furthermore, the modeldemonstrates excellent adaptability and transferability, indicating its applicability to early waring systemsfor diseases in other crops.

Key words: tea diseases, self-supervised learning, information entropy, transformer, deep learning