咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >TBF-YOLOv8n: A Lightweight Tea... 收藏

TBF-YOLOv8n: A Lightweight Tea Bud Detection Model Based on YOLOv8n Improvements

作     者:Fang, Wenhui Chen, Weizhen 

作者机构:Wuhan Polytech Univ Sch Elect & Elect Engn Wuhan 430048 Peoples R China 

出 版 物:《SENSORS》 (Sensors)

年 卷 期:2025年第25卷第2期

页      面:547-547页

核心收录:

学科分类:0710[理学-生物学] 071010[理学-生物化学与分子生物学] 0808[工学-电气工程] 07[理学] 0804[工学-仪器科学与技术] 0703[理学-化学] 

基  金:Hubei Provincial Natural Science Foundation of China Science Research Foundation of the Education Department of Hubei Province of China [B2020061] 2022CFB449 

主  题:tea buds intelligence YOLOv8n distributed shift convolution computer vision 

摘      要:Tea bud localization detection not only ensures tea quality, improves picking efficiency, and advances intelligent harvesting, but also fosters tea industry upgrades and enhances economic benefits. To solve the problem of the high computational complexity of deep learning detection models, we developed the Tea Bud DSCF-YOLOv8n (TBF-YOLOv8n)lightweight detection model. Improvement of the Cross Stage Partial Bottleneck Module with Two Convolutions(C2f) module via efficient Distributed Shift Convolution (DSConv) yields the C2f module with DSConv(DSCf)module, which reduces the model s size. Additionally, the coordinate attention (CA) mechanism is incorporated to mitigate interference from irrelevant factors, thereby improving mean accuracy. Furthermore, the SIOU_Loss (SCYLLA-IOU_Loss) function and the Dynamic Sample(DySample)up-sampling operator are implemented to accelerate convergence and enhance both average precision and detection accuracy. The experimental results show that compared to the YOLOv8n model, the TBF-YOLOv8n model has a 3.7% increase in accuracy, a 1.1% increase in average accuracy, a 44.4% reduction in gigabit floating point operations (GFLOPs), and a 13.4% reduction in the total number of parameters included in the model. In comparison experiments with a variety of lightweight detection models, the TBF-YOLOv8n still performs well in terms of detection accuracy while remaining more lightweight. In conclusion, the TBF-YOLOv8n model achieves a commendable balance between efficiency and precision, offering valuable insights for advancing intelligent tea bud harvesting technologies.

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分