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Microscopic Insect Pest Detection in Tea Plantations: Improved YOLOv8 Model Based on Deep Learning

Author

Listed:
  • Zejun Wang

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
    Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

  • Shihao Zhang

    (Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China
    College of Mechanical and Electrical Engineering, Wuhan Donghu University, Wuhan 430212, China)

  • Lijiao Chen

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China)

  • Wendou Wu

    (Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

  • Houqiao Wang

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
    Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

  • Xiaohui Liu

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
    Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

  • Zongpei Fan

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
    Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

  • Baijuan Wang

    (College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
    Yunnan Organic Tea Industry Intelligent Engineering Research Center, Kunming 650201, China)

Abstract

Pest infestations in tea gardens are one of the common issues encountered during tea cultivation. This study introduces an improved YOLOv8 network model for the detection of tea pests to facilitate the rapid and accurate identification of early-stage micro-pests, addressing challenges such as small datasets and the difficulty of extracting phenotypic features of target pests in tea pest detection. Based on the original YOLOv8 network framework, this study adopts the SIoU optimized loss function to enhance the model’s learning ability for pest samples. AKConv is introduced to replace certain network structures, enhancing feature extraction capabilities and reducing the number of model parameters. Vision Transformer with Bi-Level Routing Attention is embedded to provide the model with a more flexible computation allocation and improve its ability to capture target position information. Experimental results show that the improved YOLOv8 network achieves a detection accuracy of 98.16% for tea pest detection, which is a 2.62% improvement over the original YOLOv8 network. Compared with the YOLOv10, YOLOv9, YOLOv7, Faster RCNN, and SSD models, the improved YOLOv8 network has increased the mAP value by 3.12%, 4.34%, 5.44%, 16.54%, and 11.29%, respectively, enabling fast and accurate identification of early-stage micro pests in tea gardens. This study proposes an improved YOLOv8 network model based on deep learning for the detection of micro-pests in tea, providing a viable research method and significant reference for addressing the identification of micro-pests in tea. It offers an effective pathway for the high-quality development of Yunnan’s ecological tea industry and ensures the healthy growth of the tea industry.

Suggested Citation

  • Zejun Wang & Shihao Zhang & Lijiao Chen & Wendou Wu & Houqiao Wang & Xiaohui Liu & Zongpei Fan & Baijuan Wang, 2024. "Microscopic Insect Pest Detection in Tea Plantations: Improved YOLOv8 Model Based on Deep Learning," Agriculture, MDPI, vol. 14(10), pages 1-21, October.
  • Handle: RePEc:gam:jagris:v:14:y:2024:i:10:p:1739-:d:1491244
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    References listed on IDEAS

    as
    1. Chaohui Tang & Qingxin Zhu & Wenjun Wu & Wenlin Huang & Chaoqun Hong & Xinzheng Niu, 2020. "PLANET: Improved Convolutional Neural Networks with Image Enhancement for Image Classification," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-10, March.
    2. Shudan Guo & Seung-Chul Yoon & Lei Li & Wei Wang & Hong Zhuang & Chaojie Wei & Yang Liu & Yuwen Li, 2023. "Recognition and Positioning of Fresh Tea Buds Using YOLOv4-lighted + ICBAM Model and RGB-D Sensing," Agriculture, MDPI, vol. 13(3), pages 1-19, February.
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