基于深度学习的两阶段玉米叶片病害分级方法OA
A deep learning-based two-stage method for severity grading of corn leaf diseases
基于深度学习的玉米病害检测在简单背景图像中已取得相对成功的应用,但在环境复杂的田间,由于图像背景多样,模型在病斑分割时精度下降,进而影响病害严重程度的准确分级.针对这一问题,该研究基于无人机获取的玉米叶片图像,提出了一种深度学习驱动的两阶段玉米病害严重程度分级模型 YOLOv5-VGG-Seg.该模型首先从复杂的田间背景中分离出玉米叶片区域,并在去除背景的叶片图像上进行病斑分割,最终依据病斑覆盖面积比例完成病害严重程度的自动量化分级.实验结果表明,在叶片提取阶段,YOLOv5-VGG-Seg 在测试集上 F1 值达到96.0%;在第二阶段病斑分割任务中,基于叶片分割的背景去除策略使玉米大斑病病斑的提取 F1 值由 66.6%提升至 72.1%,综合精度提升 5.5 百分点;最后,基于玉米叶片病斑分割结果进行病害严重程度统计分析,病害分级 F1值达到 72.0%.该方法能够有效应对田间复杂背景干扰,实现对玉米大斑病的精准分割与可靠分级,为无人机条件下的作物病害自动化监测提供了可行的技术方案.
The deep learning-based detection of corn diseases has proven effective for images with simple backgrounds.However,for images of complex field environments,diverse backgrounds lead to decreased model accuracy in lesion segmentation,further affecting the accurate grading of disease severity.Hence,based on the corn leaf images acquired by unmanned aerial vehicles(UAVs),this study proposed a deep learning-based two-stage model for grading the severity of corn leaf diseases:the YOLOv5-VGG-Seg model.This model first separates the corn leaf areas from complex field backgrounds and then performs lesion segmentation on the background-removed leaf images.Ultimately,it completes the automatic quantitative grading of disease severity according to the proportions of lesion-covered leaf areas.The experimental results show that in the leaf extraction stage,the YOLOv5-VGG-Seg model achieved an F1 score of 96.0%on the test set.In the lesion segmentation stage,the background removal strategy based on leaf segmentation increased the F1 score for the extraction of the northern corn leaf blight(NCLB)lesions from 66.6%to 72.1%,improving the overall accuracy by 5.5%.Finally,based on the segmentation results of corn leaf lesions,the model performed a statistical analysis of disease severity,achieving an F1 score of 72.0%.Therefore,this two-stage method enables accurate segmentation and reliable grading of NCLB by effectively eliminating the interference from complex field environments.It provides a feasible technical solution for automatic crop disease monitoring under UAV conditions.
文飞;吴骅;李鑫;黄俊尧;刘凡卉;于海龙;董振海
辽宁工程技术大学测绘与地理科学学院,阜新 123009电子科技大学资源与环境学院,成都 611731电子科技大学资源与环境学院,成都 611731辽宁工程技术大学测绘与地理科学学院,阜新 123009依安县农业技术推广中心,齐齐哈尔 161599依安县农业技术推广中心,齐齐哈尔 161599依安县农业技术推广中心,齐齐哈尔 161599
信息技术与安全科学
深度学习无人机玉米大斑病病害分级
deep learningunmanned aerial vehicle(UAV)northern corn leaf blight(NCLB)disease severity grading
《自然资源遥感》 2026 (2)
61-69,9
中国科学院战略性先导科技专项"基于无人机的黑土地数据监测与感知系统"(编号:XDA28050200)与"模型驱动地理知识推理"(编号:XDB0740200)共同资助.
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