Zhu Hongyan, Wang Dani, Wei Yuzhen, Wang Pengcheng, Su Min
Guangxi Key Laboratory of Brain-Inspired Computing and Intelligent Chips, School of Electronic and Information Engineering, Guangxi Normal University, Guilin, 541004, China.
Education Department of Guangxi Zhuang Autonomous Region, Key Laboratory of Integrated Circuits and Microsystems (Guangxi Normal University), Guilin, 541004, China.
Plant Methods. 2025 Jun 24;21(1):88. doi: 10.1186/s13007-025-01396-3.
Citrus leaf diseases significantly affect production efficiency and fruit quality in the citrus industry. To effectively identify and classify citrus leaf diseases, this study proposed a classification approach leveraging deep learning techniques (YOLOV8 equipped with CSPPC, MultiDimen, SpatialConv, YOLOV8-CMS). Additionally, a segmentation method was utilized to extract leaf and lesion areas for disease severity grading based on their pixel ratio.
By collecting and preprocessing a citrus leaf image dataset, the YOLOV8-CMS model was trained for disease classification. The model integrated MultiDimen attention, SpatialConv, and the CSPPC module to enhance performance. Furthermore, a segmentation approach was applied to precisely segment both leaf and lesion areas, enabling a quantitative assessment of disease severity. To verify the effectiveness of the proposed approach, multiple YOLO-based architectures, including different YOLOV8 series models, YOLOV5, and YOLOV3, were compared and analyzed. Results demonstrated that the proposed method achieved outstanding performance in citrus leaf disease classification, with an mAP50 of 98.2% in distinguishing healthy and diseased leaves and an accuracy of 97.9% in multi-class disease classification tasks.
The proposed YOLOV8-CMS model outperformed traditional methods in citrus leaf disease classification, while the segmentation-based approach enabled an accurate and quantitative assessment of disease severity. These findings highlighted the potential of deep learning in precision agriculture, contributing to more effective disease management in citrus production.
柑橘叶部病害严重影响柑橘产业的生产效率和果实品质。为了有效识别和分类柑橘叶部病害,本研究提出了一种利用深度学习技术的分类方法(配备CSPPC、MultiDimen、SpatialConv的YOLOV8,即YOLOV8 - CMS)。此外,还采用了一种分割方法,根据叶部和病斑区域的像素比例来提取它们,以进行病害严重程度分级。
通过收集和预处理柑橘叶图像数据集,对YOLOV8 - CMS模型进行病害分类训练。该模型集成了MultiDimen注意力、SpatialConv和CSPPC模块以提升性能。此外,应用了一种分割方法来精确分割叶部和病斑区域,从而能够对病害严重程度进行定量评估。为验证所提方法的有效性,对包括不同YOLOV8系列模型、YOLOV5和YOLOV3在内的多种基于YOLO的架构进行了比较和分析。结果表明,所提方法在柑橘叶部病害分类中表现出色,在区分健康叶和病叶时mAP50达到98.2%,在多类病害分类任务中的准确率为97.9%。
所提的YOLOV8 - CMS模型在柑橘叶部病害分类方面优于传统方法,而基于分割的方法能够对病害严重程度进行准确的定量评估。这些发现凸显了深度学习在精准农业中的潜力,有助于在柑橘生产中更有效地进行病害管理。