基于WEED-YOLOv10的玉米杂草检测方法与对靶喷药系统设计OA
Design of target spraying control system based on detecting maize and weed using WEED-YOLOv10
针对玉米杂草识别过程中因光照变化导致识别精确度低及漏检问题,该研究以幼苗期玉米及其伴生杂草为研究对象,设计一种基于WEED-YOLOv10的玉米杂草检测方法.首先,通过无人机快速采集田间高分辨率图像构建了玉米杂草数据集;其次,以YOLOv10n为基线网络,将骨干网络替换为ConvNeXtV2以增强特征提取能力;继而,为避免因模块拼接可能带来的信息冗余或丢失问题提升对光照干扰的鲁棒性,嵌入CBAM注意力机制;然后,引入SlimNeck结构优化网络计算效率,有效平衡了模型计算资源消耗与特征表征能力;最后,使用Focaler-EIoU损失函数进一步提高模型定位精度.试验结果表明,WEED-YOLOv10在精确率、召回率、mAP@50、mAP@50∶95和F1分数上分别达到85.4%、88.1%、90.9%、48.5%和86.7%,较基准模型分别提升了 2.4、2.9、3.5、7.0、2.6个百分点,各项精度指标均优于其他对比模型,部署在NVIDIA Jetson orin NX上的图片推理速度达到28.7帧/s,实现了检测速度与精度的平衡.进一步地,基于WEED-YOLOv10开发对靶喷药系统,该系统实时捕捉并解析来自模型的识别信号,实现对除草喷施装置的精准调控.田间试验结果显示,对靶喷药系统施药准确率为93.7%,喷洒覆盖率为90.5%,对靶偏差为1.45cm,杂草实时检测速度为20.1帧/s,实现了自动化的玉米田间除草作业.该研究为复杂光照场景下农田杂草治理提供了可靠的技术方案,对推动农业智能化作业具有重要意义.
Maize and weed identification can often require for the high accuracy under varying lighting conditions,particularly at the seedling stage of the maize growth.In this study,an accurate and rapid detection method was proposed to detect the maize and weeds in the field using the WEED-YOLOv10 framework.Detection performance was then enhanced to maintain the computational efficiency.High-resolution images were captured from the field using UAVs.A dataset was then constructed for the maize and its weeds.The YOLOv10 architecture was served as the baseline.But its backbone network was replaced with the ConvNeXtV2,in order to extract the detailed features from the input images.Convolutional block attention module(CBAM)was integrated into the network,in order to further enhance the robustness against lighting disturbances.This module was also focused the attention on the most relevant features in the image.Irrelevant information was mitigated to improve the model performance under diverse environments.Additionally,a SlimNeck structure was introduced to optimize the computational efficiency of the network.Unnecessary processing was then reduced to maintain the high feature representation.Focaler-EIoU loss function was incorporated to improve the localization accuracy.Precise identification was realized on both maize and weed instances,even in challenging scenarios.Experimental results demonstrated that the WEED-YOLOv10 outperformed the baseline model over several key evaluation metrics.The high accuracy reached 85.4%,the recall rate of 88.1%,and the mean average precision(mAP)of 90.9%at an intersection over union(IoU)threshold of 50%(mAP@50).Significant improvements were achieved in the mAP at the IoU thresholds from 50%to 95%(mAP@50:95),with a score of 48.5%.The F1-Score was 86.7%,indicating the high performance to balance the precision and recall.Compared with the baseline,the WEED-YOLOv10 model was improved by 2.4,2.9,3.5,7,and 2.6 percentage points of accuracy,recall,mAP@50,mAP@50∶95,and F1-score,respectively.The inference speed was also highly optimized as 28.7 frames per second,when deployed on an NVIDIA Jetson Orin NX.The weed detection was obtained to balance the speed and accuracy in real time.In addition,the targeted pesticide spraying was integrated to capture the recognition signals.The herbicide application was precisely controlled using the output,in order to treat only weeds rather than the maize plants.Field tests demonstrated that the spraying system achieved a high spraying accuracy of 93.7%,a coverage rate of 90.5%,and a target deviation of only 1.45 cm.The weed was detected at a speed of 20.10 frames per second,suitable for the weed control in maize fields.A reliable and efficient solution can be offered for the weed detection under complex lighting conditions.The high speed,accuracy and precision of the weed control can greatly contribute to the field operations in intelligent farming.The WEED-YOLOv10 system can be expected for the more sustainable,precise and efficient agricultural practices.This finding can also provide the high productivity and resource management in precision agriculture.
赵建国;安美林;赵学观;王雅雅;马志凯;李媛普;王博奥;郝建军
河北农业大学机电工程学院,保定 071000||河北省智慧农业装备技术创新中心,保定 071001河北农业大学机电工程学院,保定 071000北京市农林科学院智能装备技术研究中心,北京 100097河北农业大学机电工程学院,保定 071000河北农业大学机电工程学院,保定 071000河北农业大学机电工程学院,保定 071000河北农业大学机电工程学院,保定 071000河北农业大学机电工程学院,保定 071000||河北省智慧农业装备技术创新中心,保定 071001
农业科技
杂草识别YOLOv10n特征提取注意力机制SlimNeck对靶喷药系统
weed identificationYOLOv10nfeature extractionattention mechanismsSlimNecktarget spraying system
《农业工程学报》 2026 (1)
48-57,10
国家重点研发计划项目(2023YFD2301500)河北省现代农业产业技术体系创新团队建设项目(HBCT2024030207)
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