EF yolov8s:复杂环境中的人机协作甘蔗疾病检测模型

Agronomy Pub Date : 2024-09-14 DOI:10.3390/agronomy14092099
Jihong Sun, Zhaowen Li, Fusheng Li, Yingming Shen, Ye Qian, Tong Li
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引用次数: 0

摘要

在复杂的甘蔗种植环境中精确识别病害性状,不仅能有效预防常见病的传播和爆发,还能实时监测甘蔗顶部的养分缺乏综合症,便于补充相关养分,确保甘蔗的品质和产量。本文提出了一种复杂环境下的人机协作甘蔗病害检测方法。首先,收集了五种常见甘蔗病害--褐条病、锈病、环斑病、褐斑病和红腐病,以及两种养分缺乏情况--缺硫和缺磷--的数据,共计 11,364 张图片和 10 个由 4K 无人机拍摄的高清视频。利用翻转和伽玛调整等技术将数据集扩大了三倍,从而构建了疾病数据集。在 YOLOv8 框架的基础上,添加了 EMA 注意机制和 Focal 损失函数,以优化模型,解决甘蔗数据集中存在的复杂背景和正负样本不平衡的问题。构建并比较了 EF-yolov8s、EF-yolov8m、EF-yolov8n、EF-yolov7 和 EF-yolov5n 疾病检测模型。随后,对 YOLOv8 的五个基本实例分割模型进行了比较分析,并利用营养缺乏症视频进行了验证,构建了甘蔗顶部营养缺乏症症状的人机综合检测模型。实验结果表明,改进后的 EF-yolov8s 模型优于其他模型,其 mAP_0.5、精确度、召回率和 F1 分数分别达到 89.70%、88.70%、86.00% 和 88.00%,凸显了 EF-yolov8s 在甘蔗病害检测方面的有效性。此外,yolov8s-seg 在参数数量较少的情况下实现了 80.30% 的平均精度,在 mAP_0.5 方面分别比其他模型高出 5.2%、1.9%、2.02% 和 0.92%,有效地检测了营养缺乏症状,并利用计算机视觉技术解决了复杂环境下甘蔗生长监测和疾病检测的难题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EF yolov8s: A Human–Computer Collaborative Sugarcane Disease Detection Model in Complex Environment
The precise identification of disease traits in the complex sugarcane planting environment not only effectively prevents the spread and outbreak of common diseases but also allows for the real-time monitoring of nutrient deficiency syndrome at the top of sugarcane, facilitating the supplementation of relevant nutrients to ensure sugarcane quality and yield. This paper proposes a human–machine collaborative sugarcane disease detection method in complex environments. Initially, data on five common sugarcane diseases—brown stripe, rust, ring spot, brown spot, and red rot—as well as two nutrient deficiency conditions—sulfur deficiency and phosphorus deficiency—were collected, totaling 11,364 images and 10 high-definition videos captured by a 4K drone. The data sets were augmented threefold using techniques such as flipping and gamma adjustment to construct a disease data set. Building upon the YOLOv8 framework, the EMA attention mechanism and Focal loss function were added to optimize the model, addressing the complex backgrounds and imbalanced positive and negative samples present in the sugarcane data set. Disease detection models EF-yolov8s, EF-yolov8m, EF-yolov8n, EF-yolov7, and EF-yolov5n were constructed and compared. Subsequently, five basic instance segmentation models of YOLOv8 were used for comparative analysis, validated using nutrient deficiency condition videos, and a human–machine integrated detection model for nutrient deficiency symptoms at the top of sugarcane was constructed. The experimental results demonstrate that our improved EF-yolov8s model outperforms other models, achieving mAP_0.5, precision, recall, and F1 scores of 89.70%, 88.70%, 86.00%, and 88.00%, respectively, highlighting the effectiveness of EF-yolov8s for sugarcane disease detection. Additionally, yolov8s-seg achieves an average precision of 80.30% with a smaller number of parameters, outperforming other models by 5.2%, 1.9%, 2.02%, and 0.92% in terms of mAP_0.5, respectively, effectively detecting nutrient deficiency symptoms and addressing the challenges of sugarcane growth monitoring and disease detection in complex environments using computer vision technology.
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