| 注册
首页|期刊导航|智能化农业装备学报(中英文)|基于改进YOLOv8n的樱桃成熟度检测研究

基于改进YOLOv8n的樱桃成熟度检测研究

李瑞鑫 曹悦 司秀丽 马丽

智能化农业装备学报(中英文)2025,Vol.6Issue(4):40-49,10.
智能化农业装备学报(中英文)2025,Vol.6Issue(4):40-49,10.DOI:10.12398/j.issn.2096-7217.2025.04.004

基于改进YOLOv8n的樱桃成熟度检测研究

Research on cherry ripeness detection based on improved YOLOv8n

李瑞鑫 1曹悦 2司秀丽 3马丽2

作者信息

  • 1. 吉林农业大学信息技术学院,吉林 长春,130118
  • 2. 无锡学院,江苏 无锡,214105
  • 3. 吉林农业大学信息技术学院,吉林 长春,130118||吉林省农业人工智能研究基地,吉林 长春,130118
  • 折叠

摘要

Abstract

Accurate detection of cherry fruits is crucial for improving fruit quality,optimizing harvesting timing,and automating orchard management.However,due to factors such as small fruit size,diverse colors,complex backgrounds,and overlapping occlusions,detection still faced many challenges.To this end,this paper proposed a lightweight and improved model,ACS-YOLOv8n,based on the YOLOv8n architecture to enhance detection accuracy and efficiency.The model introduced an adaptive downsampling module(ADown)in the backbone network,which integrates the advantages of average pooling and max pooling,and combines multi-path convolution operations to effectively retain both global information and local salient features,thereby enhancing the detection capability of small targets.Meanwhile,the Context Guided Block(CGB)was used to replace the traditional C2f module,improving the model's ability to perceive the relationship between the target and the environment and enhancing the effect of multi-scale feature extraction through the joint extraction of local,contextual,and global features.In the neck part,the Slim-Neck structure based on GSConv and VoV-GSCSP was introduced to optimize the feature fusion method,significantly reduce computational redundancy,and balance speed and accuracy.The experimental results showed that ACS-YOLOv8n achieved 92.94%precision,90.66%recall,and 96.57%mAP50 in complex orchard environments.Compared with YOLOv8n,the precision increased by 2.62 precentage point,the recall by 1.57 precentage point,and the average precision by 2.08 precentage point,while the number of model parameters and the computational volume were reduced by 31.90%and 33.33%,respectively,and the model size was 71.43%of the original model.The proposed model demonstrated good detection performance and robustness in complex environments,providing effective technical support for automatic cherry harvesting and intelligent orchard management.

关键词

樱桃/成熟度检测/YOLOv8n/多尺度特征提取/目标检测/深度学习

Key words

cherry/ripeness detection/YOLOv8n/multi-scale feature extraction/object detection/deep learning

分类

农业科技

引用本文复制引用

李瑞鑫,曹悦,司秀丽,马丽..基于改进YOLOv8n的樱桃成熟度检测研究[J].智能化农业装备学报(中英文),2025,6(4):40-49,10.

基金项目

国家自然科学基金项目(U19A2061) (U19A2061)

无锡学院科研启动项目(2024r007)National Natural Science Foundation of China(U19A2061) (2024r007)

Wuxi University Research Start-up Project(2024r007) (2024r007)

智能化农业装备学报(中英文)

2096-7217

访问量0
|
下载量0
段落导航相关论文