Jiang Qian, Wang Hongli, Wang Haiguang
College of Plant Protection, China Agricultural University, Beijing, China.
Front Plant Sci. 2023 Mar 17;14:1150855. doi: 10.3389/fpls.2023.1150855. eCollection 2023.
The accurate severity assessment of wheat stripe rust is the basis for the pathogen-host interaction phenotyping, disease prediction, and disease control measure making.
To realize the rapid and accurate severity assessment of the disease, the severity assessment methods of the disease were investigated based on machine learning in this study. Based on the actual percentages of the lesion areas in the areas of the corresponding whole single diseased wheat leaves of each severity class of the disease, obtained after the image segmentation operations on the acquired single diseased wheat leaf images and the pixel statistics operations on the segmented images by using image processing software, under two conditions of considering healthy single wheat leaves or not, the training and testing sets were constructed by using two modeling ratios of 4:1 and 3:2, respectively. Then, based on the training sets, two unsupervised learning methods including -means clustering algorithm and spectral clustering and three supervised learning methods including support vector machine, random forest, and -nearest neighbor were used to build severity assessment models of the disease, respectively.
Regardless of whether the healthy wheat leaves were considered or not, when the modeling ratios were 4:1 and 3:2, satisfactory assessment performances on the training and testing sets can be achieved by using the optimal models based on unsupervised learning and those based on supervised learning. In particular, the assessment performances obtained by using the optimal random forest models were the best, with the accuracies, precisions, recalls, and F1 scores for all the severity classes of the training and testing sets equal to 100.00% and the overall accuracies of the training and testing sets equal to 100.00%.
The simple, rapid, and easy-to-operate severity assessment methods based on machine learning were provided for wheat stripe rust in this study. This study provides a basis for the automatic severity assessment of wheat stripe rust based on image processing technology, and provides a reference for the severity assessments of other plant diseases.
小麦条锈病准确的严重程度评估是病原体-宿主相互作用表型分析、病害预测和制定病害控制措施的基础。
为实现对该病的快速准确严重程度评估,本研究基于机器学习对该病的严重程度评估方法进行了研究。根据对采集的单叶病小麦叶片图像进行图像分割操作以及对分割后的图像进行像素统计操作后得到的各严重程度等级的相应全单病小麦叶片区域中病斑面积的实际百分比,在考虑健康单叶小麦和不考虑健康单叶小麦两种情况下,分别采用4:1和3:2两种建模比例构建训练集和测试集。然后,基于训练集,分别使用包括K均值聚类算法和谱聚类在内的两种无监督学习方法以及包括支持向量机、随机森林和K近邻在内的三种监督学习方法建立该病的严重程度评估模型。
无论是否考虑健康小麦叶片,当建模比例为4:1和3:2时,使用基于无监督学习的最优模型和基于监督学习的最优模型均可在训练集和测试集上获得令人满意的评估性能。特别是,使用最优随机森林模型获得的评估性能最佳,训练集和测试集所有严重程度等级的准确率、精确率、召回率和F1分数均等于100.00%,训练集和测试集的总体准确率均等于100.00%。
本研究为小麦条锈病提供了基于机器学习的简单、快速且易于操作的严重程度评估方法。本研究为基于图像处理技术的小麦条锈病自动严重程度评估提供了依据,并为其他植物病害的严重程度评估提供了参考。