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[冬小麦条锈病严重程度评估的比较研究]

[Comparative Research on Estimating the Severity of Yellow Rust in Winter Wheat].

作者信息

Wang Jing, Jing Yuan-shu, Huang Wen-jiang, Zhang Jing-cheng, Zhao Juan, Zhang Qing, Wang Li

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Jun;35(6):1649-53.

Abstract

In order to improve the accuracy of wheat yellow rust disease severity using remote sensing and to find the optimum inversion model of wheat diseases, the canopy reflectance and disease index (DI) of winter wheat under different severity stripe rust were acquired. The three models of PLS (Partial Least Square), BP neural network using seven hyperspectral vegetation indices which have significant relationship with the occurrence of disease and vegetation index (PRI) were adopted to build a feasible regression model for detecting the disease severity. The results showed that PLS performed much better. The inversion accuracy of PLS method is best than of the VI (PRI, Photochemical Reflectance Index) and BP neural network models. The coefficients of determination (R2) of three methods to estimate disease severity between predicted and measured values are 0.936, 0.918 and 0.767 respectively. Evaluation was made between the estimated DI and the measured DI, indicating that the model based on PLS is suitable for monitoring wheat disease. In addition, to explore the different contributions of diverse types of vegetation index to the models, the paper attempts to use NDVI, GNDVI and MSR which on behalf of vegetation greenness and NDWI and MSI that represents the moisture content to be input variables of PLS model. The results showed that, for the wheat yellow rust disease, changes in chlorophyll content is more sensitive to the disease severity than the changes in water content of the canopy. However, the accuracy of the two models are both lower than predicted when participating in all seven vegetation indices, namely using several species of vegetation indices tends to be more accurate than that using single category. It indicated that it has great potential for evaluating wheat disease severity by using hyper-spectral remote sensing.

摘要

为了提高利用遥感技术监测小麦条锈病病情严重程度的准确性,并找到最优的小麦病害反演模型,获取了不同条锈病严重程度下冬小麦的冠层反射率和病情指数(DI)。采用偏最小二乘法(PLS)、基于7个与病害发生密切相关的高光谱植被指数及植被指数(PRI)的BP神经网络这三种模型,构建检测病情严重程度的可行回归模型。结果表明,PLS表现更佳。PLS方法的反演精度优于VI(PRI,光化学反射指数)和BP神经网络模型。三种方法预测值与实测值之间估计病情严重程度的决定系数(R²)分别为0.936、0.918和0.767。对估计的DI和实测的DI进行评估,表明基于PLS的模型适用于监测小麦病害。此外,为探究不同类型植被指数对模型的不同贡献,本文尝试将代表植被绿度的归一化植被指数(NDVI)、绿度归一化植被指数(GNDVI)和修正型土壤调节植被指数(MSR)以及代表水分含量的归一化差异水体指数(NDWI)和水分胁迫指数(MSI)作为PLS模型的输入变量。结果表明,对于小麦条锈病,叶绿素含量变化对病情严重程度的敏感性高于冠层水分含量变化。然而,当参与所有7种植被指数时,两种模型的精度均低于预测值,即使用多种植被指数往往比使用单一类别更准确。这表明利用高光谱遥感评估小麦病害严重程度具有很大潜力。

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