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首页> 外文期刊>Precision Agriculture >Identification of yellow rust in wheat using in-situ spectral reflectance measurements and airborne hyperspectral imaging.
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Identification of yellow rust in wheat using in-situ spectral reflectance measurements and airborne hyperspectral imaging.

机译:使用原位光谱反射率测量和机载高光谱成像鉴定小麦中的黄锈病。

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The aim of this study was to evaluate the accuracy of the spectro-optical, photochemical reflectance index (PRI) for quantifying the disease index (DI) of yellow rust (Biotroph Puccinia striiformis) in wheat (Triticum aestivum L.), and its applicability in the detection of the disease using hyperspectral imagery. Over two successive seasons, canopy reflectance spectra and disease index (DI) were measured five times during the growth of wheat plants (3 varieties) infected with varying amounts of yellow rust. Airborne hyperspectral images of the field site were also acquired in the second season. The PRI exhibited a significant, negative, linear, relationship with DI in the first season (r2=0.91, n=64), which was insensitive to both variety and stage of crop development from Zadoks stage 3-9. Application of the PRI regression equation to measured spectral data in the second season yielded a coefficient of determination of r2=0.97 (n=80). Application of the same PRI regression equation to airborne hyperspectral imagery in the second season also yielded a coefficient of determination of DI of r2=0.91 (n=120). The results show clearly the potential of PRI for quantifying yellow rust levels in winter wheat, and as the basis for developing a proximal, or airborne/spaceborne imaging sensor of yellow rust in fields of winter wheat.
机译:这项研究的目的是评估分光光化学反射系数(PRI)定量小麦(Triticum aestivum L.)的黄锈病(Biotroph Puccinia striiformis)疾病指数(DI)的准确性及其适用性使用高光谱图像检测疾病。在连续两个季节中,在感染了不同数量黄锈的小麦植物(3个品种)生长期间,对冠层反射光谱和疾病指数(DI)进行了五次测量。在第二季还获得了现场现场的机载高光谱图像。 PRI在第一季与DI表现出显着的负线性关系(r2 = 0.91,n = 64),这对Zadoks 3-9阶段的作物生长阶段和品种都不敏感。将PRI回归方程应用于第二季测得的光谱数据得出的确定系数为r2 = 0.97(n = 80)。将相同的PRI回归方程应用于第二季的机载高光谱图像,得出的DI的确定系数为r2 = 0.91(n = 120)。结果清楚地显示了PRI定量定量冬小麦黄锈水平的潜力,并为开发冬小麦田间近距离或机载/星空成像的黄锈传感器奠定了基础。

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