Welcome to Smart Agriculture 中文

Smart Agriculture ›› 2026, Vol. 8 ›› Issue (1): 15-27.doi: 10.12133/j.smartag.SA202507010

• Topic--Intelligent Identification and Diagnosis of Agricultural Diseases and Pests • Previous Articles     Next Articles

Tea Leaf Disease Diagnosis Based on Improved Lightweight U-Net3+

HU Yumeng1(), GUAN Feifan1, XIE Dongchen1, MA Ping1, YU Youben2, ZHOU Jie2, NIE Yanming1, HUANG Lüwen1,3()   

  1. 1. College of Information Engineering, Northwest A&F University, Yangling 712100, China
    2. College of Horticulture, Northwest A&F University, Yangling 712100, China
    3. Key Laboratory of Agriculture Information Perception & Analytical Engineering and Technology Research Center, Yangling 712100, China
  • Received:2025-07-04 Online:2026-01-30
  • Foundation items:Science and Technology Project of the Ministry of Agriculture and Rural Affairs of China; 陕西省重点研发计划项目(2023-YBNY-219); 西北农林科技大学农业技术推广计划(Z222021411); 陕西省自然科学基础研究专项(2020JM-173)
  • About author:

    HU Yumeng, E-mail:

  • corresponding author:
    HUANG Lüwen, E-mail:

Abstract:

[Objective] Leaf diseases significantly affect both the yield and quality of tea throughout the year. To address the issue of inadequate segmentation finesse in the current tea spot segmentation models, a novel diagnosis of the severity of tea spots was proposed in this research, designated as MDC-U-Net3+, to enhance segmentation accuracy on the base framework of U-Net3+. [Methods] Multi-scale feature fusion module (MSFFM) was incorporated into the backbone network of U-Net3+ to obtain feature information across multiple receptive fields of diseased spots, thereby reducing the loss of features within the encoder. Dual multi-scale attention (DMSA) was incorporated into the skip connection process to mitigate the segmentation boundary ambiguity issue. This integration facilitates the comprehensive fusion of fine-grained and coarse-grained semantic information at full scale. Furthermore, the segmented mask image was subjected to conditional random fields (CRF) to enhance the optimization of the segmentation results [Results and Discussions] The improved model MDC-U-Net3+ achieved a mean pixel accuracy (mPA) of 94.92%, accompanied by a mean Intersection over Union (mIoU) ratio of 90.9%. When compared to the mPA and mIoU of U-Net3+, MDC-U-Net3+ model showed improvements of 1.85 and 2.12 percentage points, respectively. These results illustrated a more effective segmentation performance than that achieved by other classical semantic segmentation models. [Conclusions] The methodology presented herein could provide data support for automated disease detection and precise medication, consequently reducing the losses associated with tea diseases.

Key words: disease diagnosis, semantic segmentation, U-Net3+, multi-scale feature fusion, attention mechanism, conditional random fields

CLC Number: