Research on Diagnosis Characteristics of Wheat Powdery Mildew Under Different Severity Grading Standards

Dongyan Zhang, Xun Yin, Fenfang Lin, Linsheng Huang, Jinling Zhao, Yu Liu, Wei Ma, Qi Hong
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引用次数: 2

Abstract

Wheat powdery mildew (Blumeria graminis Dc.speer) is one of the most devastating crop diseases in the globe. Thinking of economic effective and environmental protection value, early detection of the severity of wheat powdery mildew can provide important information and technical support for disease prevention. In this study, the wheat leaves infected powdery mildew were chosen as observation objects, the obtained hyperspectral imagery data was pre-processed by reflectance calculation and noise elimination. After the disease-infected samples with different severities were divided into three-levels, four-levels, and five-levels, the effects of samples classification on identification of the disease were explored. Subsequently, the Relief-F algorithm was used to screen the sensitive bands of the disease in the early and mid-late growth stages, to observe the wavelengths change of disease identification in different developmental periods. The results showed that the sensitive bands of disease detection respectively locate at 700 nm and 680 nm for the early and mid-late growth stages, and the position of sensitive wavelength moves toward the short-wave direction as the disease worsens. On the basis, Calculating the powdery mildew disease index (PMDI) and nine kinds of common vegetation indexes, to compare their effects on disease identification, the study found that when the samples were divided into four levels, the determination coefficientR2 of PMDI is the highest. For the early and mid-late infection stages, theR2 are respectively 0.763 and 0.766. Furthermore, the corresponding SVM models were established in the different developmental periods, the classification accuracy is 90.63% at the early growth stage, while that one is the 84.62% at mid-late developmental period. The above results show that PMDI calculated by the sensitive band screening has good effective on identifying the severity of the disease, especially there is a good potential at the early growth stage.
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不同严重程度分级标准下小麦白粉病诊断特征的研究
小麦白粉病(Blumeria graminis Dc.speer)是全球最具破坏性的作物病害之一。从经济效益和环保价值的角度考虑,小麦白粉病严重程度的早期检测可以为病害防治提供重要的信息和技术支持。本研究以白粉病感染的小麦叶片为观测对象,对获得的高光谱影像数据进行反射率计算和去噪预处理。将不同严重程度的疾病感染样本分为三级、四级和五级,探讨样本分类对疾病识别的影响。随后,利用Relief-F算法筛选生长早期和中后期疾病的敏感波段,观察不同发育时期疾病识别波长的变化。结果表明:生长前期和中后期病害检测的敏感波段分别位于700 nm和680 nm,随着病害的加重,敏感波长的位置向短波方向移动。在计算白粉病指数(PMDI)和9种常见植被指数的基础上,比较其对病害识别的影响,研究发现,当样本分为4个层次时,PMDI的决定系数entr2最高。感染早期和中晚期的theR2分别为0.763和0.766。在不同发育阶段建立相应的SVM模型,生长前期分类准确率为90.63%,发育中后期分类准确率为84.62%。以上结果表明,通过敏感带筛选计算出的PMDI对疾病的严重程度有很好的识别效果,尤其是在生长早期有很好的潜力。
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