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基于YOLOv8n的梨树叶片病害检测模型

黄政 张涛 孔万仔 赵丹枫 魏泉苗

湖南农业大学学报(自然科学版)2025,Vol.51Issue(2):113-121,9.
湖南农业大学学报(自然科学版)2025,Vol.51Issue(2):113-121,9.

基于YOLOv8n的梨树叶片病害检测模型

Detection model of pear leaf disease based on YOLOv8n

黄政 1张涛 1孔万仔 1赵丹枫 1魏泉苗2

作者信息

  • 1. 上海海洋大学信息学院,上海 201306
  • 2. 自然资源部东海局,上海 200137
  • 折叠

摘要

Abstract

In response to the challenges of low accuracy and large model parameters number in traditional object detection models for detecting pear leaf diseases in natural scenes,an improved model for pear leaf disease detection based on YOLOv8n was proposed.Firstly,the RepGhostNet was employed to enhance the backbone network,which utilized structural reparameterization to achieve implicit feature reuse,thereby enhancing the network's feature extraction capabilities while maintaining lightweight characteristics.Secondly,the bi-level routing attention mechanism was utilized to dynamically filter out less relevant key-value pairs at a coarse region level,thereby lowering attention to irrelevant features and increasing sensitivity to essential information,and enhancing the network's representational and feature fusion capabilities.Finally,the Inner-SIoU loss function was employed to optimize bounding box regression,accelerate model convergence and improve recognition accuracy.The results showed that the improved model effectively detected pear leaf diseases,achieving an mAP@50 score of 0.901 on the DiaMOS Plant dataset.Compared to the original model,the improved model exhibited a notable 5.6%enhancement in performance,with reduced model parameter quantity(2.4×106)and computations(7 GFLOPs),representing a 20.00%and 13.58%decrease,respectively.When compared to mainstream object detection models such as SSD,Faster-R CNN,YOLOv5n,and YOLOv8s,the enhanced model showed an increase in average precision,accompanied by reductions in both parameter and computation loads.

关键词

梨树叶片病害检测/YOLOv8n/模型轻量化/RepGhostNet/双层路由注意力机制

Key words

pear leaf disease detection/YOLOv8n/model lightweighting/RepGhostNet/bi-level routing attention mechanism

分类

信息技术与安全科学

引用本文复制引用

黄政,张涛,孔万仔,赵丹枫,魏泉苗..基于YOLOv8n的梨树叶片病害检测模型[J].湖南农业大学学报(自然科学版),2025,51(2):113-121,9.

基金项目

国家自然科学基金青年项目(42106190) (42106190)

湖南农业大学学报(自然科学版)

OA北大核心

1007-1032

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