School of Remote Sensing & Geomatics Engineering, Nanjing University of Information Science & Technology, Nanjing 210044, China.
National Engineering Research Center for Agro-Ecological Big Data Analysis & Application, Anhui University, Hefei 230601, China.
Sensors (Basel). 2020 Nov 2;20(21):6243. doi: 10.3390/s20216243.
Sheath blight (ShB), caused by AG1-I, is one of the most important diseases in rice worldwide. The symptoms of ShB primarily develop on leaf sheaths and leaf blades. Hyperspectral remote sensing technology has the potential of rapid, efficient and accurate detection and monitoring of the occurrence and development of rice ShB and other crop diseases. This study evaluated the spectral responses of leaf blade fractions with different development stages of ShB symptoms to construct the spectral feature library of rice ShB based on "three-edge" parameters and narrow-band vegetation indices to identify the disease on the leaves. The spectral curves of leaf blade lesions have significant changes in the blue edge, green peak, yellow edge, red valley, red edge and near-infrared regions. The variables of the normalized index between green peak amplitude and red valley amplitude (Rg - Ro)/(Rg + Ro), the normalized index between the yellow edge area and blue edge area (SDy - SDb)/(SDy + SDb), the ratio index of green peak amplitude and red valley amplitude (Rg/Ro) and the nitrogen reflectance index (NRI) had high relevance to the disease. At the leaf scale, the importance weights of all attributes decreased with the effect of non-infected areas in a leaf by the ReliefF algorithm, with Rg/Ro being the indicator having the highest importance weight. Estimation rate of 95.5% was achieved in the decision tree classifier with the parameter of Rg/Ro. In addition, it was found that the variety degree of absorptive valley, reflection peak and reflecting steep slope was different in the blue edge, green and red edge regions, although there were similar spectral curve shapes between leaf sheath lesions and leaf blade lesions. The significant difference characteristic was the ratio index of the red edge area and green peak area (SDr/SDg) between them. These results can provide the basis for the development of a specific sensor or sensors system for detecting the ShB disease in rice.
稻纹枯病(Sheath blight,ShB),又称云纹病,是由层出镰刀菌(Fusarium proliferatum)引起的一种真菌性病害,是世界范围内水稻的主要病害之一。ShB 主要在叶片叶鞘和叶片上表现症状。高光谱遥感技术在快速、高效、准确地检测和监测水稻 ShB 等作物病害的发生和发展方面具有潜力。本研究评估了具有不同症状发育阶段的叶片叶片部分的光谱响应,基于“三边缘”参数和窄带植被指数构建了水稻 ShB 的光谱特征库,以识别叶片上的病害。叶片病斑的光谱曲线在蓝边、绿峰、黄边、红谷、红边和近红外区域有明显变化。归一化指数 Rg-Ro)/(Rg+Ro) between the green peak amplitude and red valley amplitude 和归一化指数 (SDy-SDb)/(SDy+SDb) between the yellow edge area and blue edge area 的变量、绿峰幅度与红谷幅度的比值指数 (Rg/Ro) 和氮反射率指数 (NRI) 与疾病高度相关。在叶片尺度上,根据 ReliefF 算法,受非感染区域影响,所有属性的重要性权重均降低,其中 Rg/Ro 指标的重要性权重最高。在决策树分类器中,Rg/Ro 参数的估计率达到 95.5%。此外,还发现尽管叶片鞘部病斑和叶片病斑的光谱曲线形状相似,但在蓝边、绿边和红边区域,吸收谷、反射峰和反射陡峭斜率的品种程度存在差异。它们之间的显著差异特征是红边区域与绿峰区域的比值指数(SDr/SDg)。这些结果可为开发特定的传感器或传感器系统来检测水稻纹枯病提供依据。