Wang Hui, Qin Feng, Ruan Liu, Wang Rui, Liu Qi, Ma Zhanhong, Li Xiaolong, Cheng Pei, Wang Haiguang
Department of Plant Pathology, China Agricultural University, Beijing, China.
Kaifeng Experimental Station of China Agricultural University, Kaifeng, Henan Province, China.
PLoS One. 2016 Apr 29;11(4):e0154648. doi: 10.1371/journal.pone.0154648. eCollection 2016.
It is important to implement detection and assessment of plant diseases based on remotely sensed data for disease monitoring and control. Hyperspectral data of healthy leaves, leaves in incubation period and leaves in diseased period of wheat stripe rust and wheat leaf rust were collected under in-field conditions using a black-paper-based measuring method developed in this study. After data preprocessing, the models to identify the diseases were built using distinguished partial least squares (DPLS) and support vector machine (SVM), and the disease severity inversion models of stripe rust and the disease severity inversion models of leaf rust were built using quantitative partial least squares (QPLS) and support vector regression (SVR). All the models were validated by using leave-one-out cross validation and external validation. The diseases could be discriminated using both distinguished partial least squares and support vector machine with the accuracies of more than 99%. For each wheat rust, disease severity levels were accurately retrieved using both the optimal QPLS models and the optimal SVR models with the coefficients of determination (R2) of more than 0.90 and the root mean square errors (RMSE) of less than 0.15. The results demonstrated that identification and severity evaluation of stripe rust and leaf rust at the leaf level could be implemented based on the hyperspectral data acquired using the developed method. A scientific basis was provided for implementing disease monitoring by using aerial and space remote sensing technologies.
基于遥感数据进行植物病害检测与评估对于病害监测和控制至关重要。本研究采用基于黑纸的测量方法,在田间条件下收集了小麦条锈病和小麦叶锈病健康叶片、潜伏期叶片和发病期叶片的高光谱数据。经过数据预处理后,使用判别偏最小二乘法(DPLS)和支持向量机(SVM)建立病害识别模型,使用定量偏最小二乘法(QPLS)和支持向量回归(SVR)建立条锈病病情严重程度反演模型和叶锈病病情严重程度反演模型。所有模型均采用留一法交叉验证和外部验证进行验证。使用判别偏最小二乘法和支持向量机均可区分病害,准确率均超过99%。对于每种小麦锈病,使用最优QPLS模型和最优SVR模型均可准确反演病情严重程度水平,决定系数(R2)均大于0.90,均方根误差(RMSE)均小于0.15。结果表明,基于所开发方法获取的高光谱数据,可在叶片水平上实现条锈病和叶锈病的识别与严重程度评估。为利用航空和航天遥感技术进行病害监测提供了科学依据。