Jiang Jin-Bao, Chen Yun-Hao, Huang Wen-Jiang
College of Geoscience and Surveying Engineering, China Univeristy of Mine and Technology, Beijing 100083, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2010 Jun;30(6):1614-8.
The objective of the present paper is to identify healthy wheat and disease wheat by using hyeprspectral remote sensing as soon as possible. The canopy spectral reflectance of winter wheat infected by different severity yellow rust was measured and the disease indices (DI) were investigated in the field respectively. Smoothing the canopy spectra and calculating the first derivative values, the two methods were used to calculate the red edge position (REP) and yellow edge position (YEP) of the first derivative values: (a) maximum of the first derivative value; (b) Cho and Skidmore method. The result showed that REP gradually shifted to short-wave band, and the YEP gradually shifted to long-wave band with disease severity increasing, however, REP-YEP quickly became smaller. Analyzing and comparing the prediction precision of REP, YEP and REP-YEP for DI, the result indicated that the model REP-YEP as variable has the best estimation precision for DI than REP and YEP, the model estimation error is 6.22, and relative error is 14.3%, and it could identify healthy and disease wheat 12 days before the disease symptom apparently appeared. Therefore, this study not only can provide theory and technology for large areas monitoring of wheat disease by using hyperspectral remote sensing in the future, but also has the important meaning and practical application value for implementing precision agriculture.
本文的目的是尽快利用高光谱遥感识别健康小麦和染病小麦。分别在田间测量了受不同严重程度条锈病感染的冬小麦冠层光谱反射率,并调查了病情指数(DI)。对冠层光谱进行平滑处理并计算一阶导数,采用两种方法计算一阶导数的红边位置(REP)和黄边位置(YEP):(a)一阶导数的最大值;(b)赵和斯基德莫尔方法。结果表明,随着病情加重,REP逐渐向短波波段移动,YEP逐渐向长波波段移动,然而,REP - YEP迅速变小。分析比较REP、YEP和REP - YEP对DI的预测精度,结果表明以REP - YEP为变量的模型对DI的估计精度优于REP和YEP,模型估计误差为6.22,相对误差为14.3%,且能在病害症状明显出现前12天识别健康小麦和染病小麦。因此,本研究不仅可为今后利用高光谱遥感大面积监测小麦病害提供理论和技术,而且对实施精准农业具有重要意义和实际应用价值。