| 注册
首页|期刊导航|北方农业学报|基于改进的YOLOv5苹果叶部病害识别研究

基于改进的YOLOv5苹果叶部病害识别研究

赵兴 邬欢欢

北方农业学报2024,Vol.52Issue(1):125-134,10.
北方农业学报2024,Vol.52Issue(1):125-134,10.DOI:10.12190/j.issn.2096-1197.2024.01.14

基于改进的YOLOv5苹果叶部病害识别研究

Research on apple leaf disease detection based on improved YOLOv5

赵兴 1邬欢欢2

作者信息

  • 1. 塔里木大学信息工程学院,新疆阿拉尔 843300
  • 2. 塔里木大学信息工程学院,新疆阿拉尔 843300||塔里木绿洲农业教育部重点实验室,新疆阿拉尔 843300
  • 折叠

摘要

Abstract

[Objective]Propose a disease target detection algorithm based on improved YOLOv5 model,to achieve automatic recognition of apple leaf diseases and solve the problems of miss and false detection in the YOLOv5 detection model.[Methods]Based on the YOLOv5 model improved by convolutional neural network,weighted bidirectional feature pyramid network(BiFPN)feature fusion method was used to effectively improve the adverse effect of PANet on multi-scale feature fusion.The CBAM module was added to enable the network to more accurately locate and identify apple leaf diseases and establishing an algorithm model for detecting apple leaf diseases.The ATCSP module and top-down feature fusion method were used to enhance the detection performance of the model for multi-scale diseases.The model was compared with SSD,YOLOv4,YOLOv6,and YOLOv7 models.[Results]The improved YOLOv5 detection algorithm model significantly improved the accuracy of apple leaf disease detection.Compared with the original algorithm,accuracy(P)increased by 5.1%,reaching 90.8%;average precision mean(mAP)increased by 1.2%,reaching 93.4%;the model size reduced by 21.4 MB.The accuracy of improved YOLOV5 algorithm was 11.3,4.4,4.2,and 3.6 percentage points higher than SSD,YOLOv4,YOLOv6,and YOLOv7 models,respectively.[Conclusion]A convolutional neural network-based improved YOLOv5 apple leaf disease detection model was proposed.The improved YOLOv5 model had fast detection speed,high detection accuracy,and small size,which can achieve automatic recognition of apple leaf diseases.

关键词

YOLOv5/苹果/叶部病害/识别/卷积神经网络

Key words

YOLOv5/Apple/Leaf diseases/Identification/Convolutional neural network

分类

信息技术与安全科学

引用本文复制引用

赵兴,邬欢欢..基于改进的YOLOv5苹果叶部病害识别研究[J].北方农业学报,2024,52(1):125-134,10.

基金项目

兵团财政科技计划项目南疆重点产业创新发展支撑计划(2022DB005) (2022DB005)

塔里木大学校长基金项目(TDZKZD202104) (TDZKZD202104)

北方农业学报

OACSTPCD

2096-1197

访问量0
|
下载量0
段落导航相关论文