基于端到端YOLOv8的植物病害检测与分割:一种综合方法

Syed Asif Ahmad Qadri, N. Huang, T. Wani, Showkat Ahmad Bhat
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引用次数: 0

摘要

预防和管理植物叶片病害需要可靠和精确的检测方法。检测植物叶片病害是一个耗时的过程,对生产力和作物品质有负面影响。本研究拟利用PlantVillage和PlantDoc数据集对Ultralytics YOLOv8模型进行端到端训练,提出一种植物叶片病害检测与分割的深度学习解决方案。YOLOv8型号是YOLO系列的进步,旨在提高检测速度而不牺牲精度。其复杂的结构由多个卷积层组成,可以从图像中提取复杂的特征,从而精确识别植物叶片病害。由于该模型是端到端训练的,因此它可以有效地从输入数据中学习和推广,从而提高其对未见或新的叶片病害实例的预测性能。通过精密度、召回率、mAP50和mAP50-95值以及f1分数等重要统计指标对YOLOv8方法的评价结果进行了验证,结果表明,边界框的评价结果分别为99.8{%}、99.3%、99.5%、96.5%和0.999,分割掩码的评价结果分别为99.1%、99.3%、99.3%、98.5%和0.992。结果表明,该模型在准确检测和分割病变区域方面具有很强的性能,具有较高的精度、召回率和mAP值。这些发现突出了YOLOv8模型在植物病害检测方面的有效性,展示了其在精准农业和作物管理应用方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Disease Detection and Segmentation using End-to-End YOLOv8: A Comprehensive Approach
Preventing and managing plant leaf diseases requires a dependable and precise detection method. Detecting leaf diseases in plants is a time-consuming process that has a negative impact on productivity and crop quality. By leveraging the PlantVillage and PlantDoc datasets to train the Ultralytics YOLOv8 model from end to end, this research intends to present a deep learning solution to the detection and segmentation of plant leaf disease. The YOLOv8 model, an advancement of the YOLO series, has been designed to increase detection speed without sacrificing accuracy. Its intricate architecture, composed of multiple convolutional layers, enables complex feature extraction from images, leading to precise identification of plant leaf diseases. As the model is trained end-to-end, it can effectively learn and generalize from the input data, thereby enhancing its predictive performance for unseen or novel instances of leaf diseases. The evaluation results for the YOLOv8 approach are validated by prominent statistical metrics like precision, recall, mAP50 and mAP50-95 value, and F1-score, which resulted in 99.8{%}, 99.3%, 99.5%, 96.5% and 0.999 for the bounding box and 99.1%, 99.3%, 99.3%, 98.5% and 0.992 for the segmentation mask respectively. The results demonstrate the model’s strong performance in accurately detecting and segmenting diseased regions, as indicated by high precision, recall, and mAP values. These findings highlight the effectiveness of the YOLOv8 model in plant disease detection, showcasing its potential for precision agriculture and crop management applications.
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