MARA Key Lab of Pest Monitoring and Green Management, Department of Plant Pathology, College of Plant Protection, China Agricultural University, Beijing 100193, China.
Sensors (Basel). 2022 Jul 29;22(15):5676. doi: 10.3390/s22155676.
Wheat stripe rust (WSR) is a foliar disease that causes destructive damage in the wheat production context. Accurately estimating the severity of WSR in the autumn growing stage can help to objectively monitor the disease incidence level of WSR and predict the nationwide disease incidence in the following year, which have great significance for controlling its nationwide spread and ensuring the safety of grain production. In this study, to address the low accuracy and the efficiency of disease index estimation by traditional methods, WSR-diseased areas are segmented based on Segformer, and the macro disease index (MDI) is automatically calculated for the measurement of canopy-scale disease incidence. The results obtained with different semantic segmentation algorithms, loss functions, and data sets are compared for the segmentation effect, in order to address the severe class imbalance in disease region segmentation. We find that: (1) The results of the various models differed significantly, with Segformer being the best algorithm for WSR segmentation (rust class F1 score = 72.60%), based on the original data set; (2) the imbalanced nature of the data has a significant impact on the identification of the minority class (i.e., the rust class), for which solutions based on loss functions and re-weighting of the minority class are ineffective; (3) data augmentation of the minority class or under-sampling of the original data set to increase the proportion of the rust class greatly improved the F1-score of the model (rust class F1 score = 86.6%), revealing that re-sampling is a simple and effective approach to alleviating the class imbalance problem. Finally, the MDI was used to evaluate the models based on the different data sets, where the model based on the augmented data set presented the best performance (R = 0.992, RMSE = 0.008). In conclusion, the deep-learning-based semantic segmentation method, and the corresponding optimization measures, applied in this study allow us to achieve pixel-level accurate segmentation of WSR regions on wheat leaves, thus enabling accurate assessment of the degree of WSR disease under complex backgrounds in the field, consequently providing technical support for field surveys and calculation of the disease level.
小麦条锈病(WSR)是一种叶片病害,会对小麦生产造成严重破坏。准确估计秋季生长阶段的 WSR 严重程度有助于客观监测 WSR 的病害发生水平,并预测次年全国的病害发生情况,这对于控制其全国性传播和确保粮食生产安全具有重要意义。在这项研究中,为了解决传统方法估计病害指数精度低、效率低的问题,基于 Segformer 对 WSR 病斑进行分割,并自动计算宏观病害指数(MDI)来测量冠层尺度的病害发生率。比较了不同语义分割算法、损失函数和数据集的分割效果,以解决病斑分割中严重的类别不平衡问题。结果表明:(1)不同模型的结果差异显著,基于原始数据集,Segformer 是 WSR 分割的最佳算法(锈病类 F1 得分为 72.60%);(2)数据的不平衡性质对少数类(即锈病类)的识别有重大影响,基于损失函数和少数类重新加权的解决方案无效;(3)少数类别的数据增强或原始数据集的欠采样以增加锈病类的比例,极大地提高了模型的 F1 得分(锈病类 F1 得分=86.6%),表明重采样是缓解类别不平衡问题的一种简单而有效的方法。最后,基于不同数据集评估了 MDI,基于增强数据集的模型表现最佳(R=0.992,RMSE=0.008)。总之,本研究应用的基于深度学习的语义分割方法及相应的优化措施,可以实现小麦叶片上 WSR 区域的像素级精确分割,从而能够准确评估田间复杂背景下 WSR 病害的严重程度,为田间调查和病害程度计算提供技术支持。