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FGA-Corn:一种利用深度学习视觉技术在玉米心叶区域进行精准农药喷洒的集成系统。

FGA-Corn: an integrated system for precision pesticide application in center leaf areas using deep learning vision.

作者信息

Song Zhongqiang, Li Wenqiang, Song Xuehang, Li Shun

机构信息

School of Physics and Electronic Information, Weifang University, Weifang, Shandong, China.

College of Science, Henan Agricultural University, Zhengzhou, Henan, China.

出版信息

Front Plant Sci. 2025 Jul 8;16:1571228. doi: 10.3389/fpls.2025.1571228. eCollection 2025.

Abstract

INTRODUCTION

In corn pest and disease prevention, traditional blanket pesticide spraying has led to significant pesticide waste and environmental pollution. To address this challenge, research into precision agricultural equipment based on computer vision has become a hotspot.

METHODS

In this study, an integrated system named the FGA-Corn system is investigated for precision pesticide application, which consists of three important parts. The first part is the Front Camera Rear Funnel (FCRF) mechanical structure for efficient pesticide application. The second part is the Agri Spray Decision System (ASDS) algorithm, which is developed for post-processing the YOLO detection results, driving the funnel motor to enable precise pesticide delivery and facilitate real-time targeted application in specific crop areas. The third part is the GMA-YOLOv8 detection algorithm for center leaf areas. Building on the YOLOv8n framework, a more efficient GHG2S backbone generated by HGNetV2 enhanced with GhostConv and SimAM is proposed for feature extraction. The CM module integrated with Mixed Local Channel Attention is used for multi-scale feature fusion. An Auxiliary Head utilizing deep supervision is employed for improved assistive training.

RESULTS AND DISCUSSION

Experimental results on both the D1 and D2 datasets demonstrate the effectiveness and generalization ability, with mAP@0.5 scores of 94.5% (+1.6%) and 90.1% (+1.8%), respectively. The system achieves a 23.3% reduction in model size and a computational complexity of 6.8 GFLOPs. Field experiments verify the effectiveness of the system, showing a detection accuracy of 91.3 ± 1.9% for center leaves, a pesticide delivery rate of 84.1 ± 3.3%, and a delivery precision of 92.2 ± 2.9%. This research not only achieves an efficient and accurate corn precision spraying program but also offers new insights and technological advances for intelligent agricultural machinery.

摘要

引言

在玉米病虫害防治中,传统的全面喷洒农药导致了大量农药浪费和环境污染。为应对这一挑战,基于计算机视觉的精准农业设备研究成为热点。

方法

本研究对一种名为FGA - 玉米系统的集成系统进行了精准农药施用研究,该系统由三个重要部分组成。第一部分是用于高效农药施用的前摄像头后漏斗(FCRF)机械结构。第二部分是农业喷雾决策系统(ASDS)算法,该算法用于对YOLO检测结果进行后处理,驱动漏斗电机以实现精确农药输送,并便于在特定作物区域进行实时靶向施用。第三部分是用于中心叶区域的GMA - YOLOv8检测算法。在YOLOv8n框架的基础上,提出了一种由HGNetV2增强的、结合GhostConv和SimAM生成的更高效的GHG2S主干用于特征提取。集成了混合局部通道注意力的CM模块用于多尺度特征融合。采用利用深度监督的辅助头进行改进的辅助训练。

结果与讨论

在D1和D2数据集上的实验结果证明了该方法的有效性和泛化能力,mAP@0.5分数分别为94.5%(+1.6%)和90.1%(+1.8%)。该系统实现了模型大小降低23.3%,计算复杂度为6.8 GFLOPs。田间实验验证了该系统的有效性,中心叶检测准确率为91.3±1.9%,农药输送率为84.1±3.3%,输送精度为92.2±2.9%。本研究不仅实现了高效、准确的玉米精准喷洒方案,还为智能农业机械提供了新的见解和技术进展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8597/12279808/a67354a8aabf/fpls-16-1571228-g001.jpg

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