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基于PSA-YOLO11n的小麦害虫检测

康继昌 赵连军

农业大数据学报2025,Vol.7Issue(3):294-306,13.
农业大数据学报2025,Vol.7Issue(3):294-306,13.DOI:10.19788/j.issn.2096-6369.000101

基于PSA-YOLO11n的小麦害虫检测

Wheat Pest Detection Based on PSA-YOLO11n

康继昌 1赵连军1

作者信息

  • 1. 山东理工大学,济南 250000
  • 折叠

摘要

Abstract

To address the challenges of low detection accuracy caused by the diverse species,significant size variations,and complex growth environments of wheat pests in natural settings,a PSA-YOLO11n algorithm is proposed to enhance detection precision.Building upon the YOLO11n framework,the proposed improvements include three key components:1)SimCSPSPPF in Backbone:An improved Spatial Pyramid Pooling-Fast(SPPF)module,SimCSPSPPF,is integrated into the Backbone to reduce the number of channels in the hidden layers,thereby accelerating model training.2)PEC in Neck:The standard convolution layers in the Neck are replaced with Perception Enhancement Convolutions(PEC)to improve multi-scale feature extraction capabilities,enhancing detection speed.3)AWIoU Loss Function:The regression loss function is replaced with Adequate Wise IoU(AWIoU),addressing issues of bounding box distortion caused by the diversity in pest species and size variations,thereby improving the precision of bounding box localization.Experimental evaluations on the IP102 dataset demonstrate that PSA-YOLO11n achieves a mean Average Precision(mAP)of 89.10%,surpassing YOLO11n by 0.8%.Comparisons with other mainstream algorithms,including Faster R-CNN,RetinaNet,YOLOv5s,YOLOv8n,YOLOv10n,and YOLO11n,confirm that PSA-YOLO11n outperforms all baselines in terms of detection performance.These results highlight the algorithm's capability to significantly improve the detection accuracy of multi-scale wheat pests in natural environments,providing an effective solution for pest management in wheat production.

关键词

农业害虫/目标检测/YOLO11/SimCSPSPPF/PEC/AWIoU

Key words

agricultural pests/object detection/YOLO11/SimCSPSPPF/PEC/AWIoU

引用本文复制引用

康继昌,赵连军..基于PSA-YOLO11n的小麦害虫检测[J].农业大数据学报,2025,7(3):294-306,13.

基金项目

工业互联网生态智能创新与应用平台(2020SNPT0055) (2020SNPT0055)

农业大数据学报

2096-6369

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