Li He, Guo Changle, Yang Zishang, Chai Jiajun, Shi Yunhui, Liu Jiawei, Zhang Kaifei, Liu Daoqi, Xu Yufei
College of Mechanical and Electrical Engineering, Henan Agriculture University, Zhengzhou, China.
Changyuan Branch, Henan Academy of Agricultural Sciences, Xinxiang, China.
Front Plant Sci. 2022 Dec 19;13:1072631. doi: 10.3389/fpls.2022.1072631. eCollection 2022.
Deep learning techniques have made great progress in the field of target detection in recent years, making it possible to accurately identify plants in complex environments in agricultural fields. This project combines deep learning algorithms with spraying technology to design a machine vision precision real-time targeting spraying system for field scenarios. Firstly, the overall structure scheme of the system consisting of image acquisition and recognition module, electronically controlled spray module and pressure-stabilized pesticide supply module was proposed. After that, based on the target detection model YOLOv5s, the model is lightened and improved by replacing the backbone network and adding an attention mechanism. Based on this, a grille decision control algorithm for solenoid valve group on-off was designed, while common malignant weeds were selected as objects to produce data sets and complete model training. Finally, the deployment of the hardware system and detection model on the electric spray bar sprayer was completed, and field trials were conducted at different speeds. The experimental results show that the improved algorithm reduces the model size to 53.57% of the original model with less impact on mAP accuracy, improves FPS by 18.16%. The accuracy of on-target spraying at 2km/h, 3km/h and 4km/h speeds were 90.80%, 86.20% and 79.61%, respectively, and the spraying hit rate decreased as the operating speed increased. Among the hit rate components, the effective recognition rate was significantly affected by speed, while the relative recognition hit rate was less affected.
近年来,深度学习技术在目标检测领域取得了巨大进展,使得在农业领域复杂环境中准确识别植物成为可能。本项目将深度学习算法与喷雾技术相结合,设计了一种适用于田间场景的机器视觉精准实时靶向喷雾系统。首先,提出了由图像采集与识别模块、电控喷雾模块和稳压农药供应模块组成的系统总体结构方案。之后,基于目标检测模型YOLOv5s,通过替换骨干网络和添加注意力机制对模型进行轻量化改进。在此基础上,设计了一种用于电磁阀组通断的格栅决策控制算法,同时选取常见恶性杂草作为对象生成数据集并完成模型训练。最后,完成了硬件系统和检测模型在电动喷雾杆喷雾器上的部署,并在不同速度下进行了田间试验。实验结果表明,改进后的算法将模型大小减小到原模型的53.57%,对平均精度均值(mAP)精度的影响较小,帧率(FPS)提高了18.16%。在2km/h、3km/h和4km/h速度下的靶向喷雾准确率分别为90.80%、86.20%和79.61%,喷雾命中率随作业速度的增加而降低。在命中率组成部分中,有效识别率受速度影响显著,而相对识别命中率受影响较小。