首页> 外文期刊>European Journal of Agronomy >Detection of biotic stress (Venturia inaequalis) in apple trees using hyperspectral data: non-parametric statistical approaches and physiological implications.
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Detection of biotic stress (Venturia inaequalis) in apple trees using hyperspectral data: non-parametric statistical approaches and physiological implications.

机译:使用高光谱数据检测苹果树中的生物胁迫(文氏不满):非参数统计方法和生理意义。

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The use of hyperspectral approaches for early detection of plant stress caused by Venturia inaequalis (apple scab) was investigated to move towards more efficient and reduced application of pesticides, fertilizers or other crop management treatments in apple orchards. Apple leaves of the resistant cultivar, Rewena and the susceptible cultivar, Braeburn, were artificially inoculated with conidia of V. inaequalis in a controlled greenhouse environment. The research focused on (i) determining if leaves infected with V. inaequalis could be differentiated from non-infected leaves, (ii) investigating at which developmental stage V. inaequalis infection could be detected, and (iii) selecting wavelengths that best differentiated between infected and non-infected leaves. Hyperspectral data were used because of their contiguous nature and the abundance of narrow wavelength bands in the electromagnetic reflectance spectrum, thereby providing the spectral sensitivity needed to detect subtle variations in reflectance. Processing the data, however, presented challenges, given the need to avoid data redundancy, identification of data extraction techniques, and maintaining modeling accuracy. Statistical techniques therefore had to be robust. Logistic regression, partial least squares logistic discriminant analysis, and tree-based modeling were used to select the hyperspectral bands that best defined differences among infected and non-infected leaves. Results suggested that good predictability (c-values >0.8) could be achieved when classifying infected plants based on these supervised classification techniques. It was concluded that the spectral domains between 1350-1750 nm and 2200-2500 nm were the most important regions for separating stressed from healthy leaves immediately after infection. The visible wavelengths, especially around 650-700 nm, increased in importance three weeks after infection at a well-developed infection stage. Identification of such critical spectral regions constitutes the logical first step towards development of robust stress indicators based on hyperspectral imagery..
机译:已研究使用高光谱方法及早检测出因不饱和Venturia(苹果黑星病)引起的植物胁迫,以期在苹果园中更有效和减少农药,肥料或其他作物管理方法的使用。在控制的温室环境中,用不等分生孢子的分生孢子人工接种抗性品种Rewena和易感品种Braeburn的苹果叶。这项研究的重点是(i)确定感染了不等边弧菌的叶子是否可以与未感染的叶子区分开;(ii)调查可以检测到不等边弧菌的发育阶段;以及(iii)选择在感染和未感染的叶子。之所以使用高光谱数据,是因为它们具有连续的性质,并且电磁反射光谱中存在狭窄的波段,从而提供了检测反射率细微变化所需的光谱灵敏度。然而,鉴于需要避免数据冗余,识别数据提取技术并保持建模精度,处理数据提出了挑战。因此,统计技术必须强大。使用Logistic回归,偏最小二乘Logistic判别分析和基于树的模型来选择能最好地定义受感染和未感染叶片之间差异的高光谱带。结果表明,基于这些监督分类技术对受感染植物进行分类时,可以实现良好的可预测性(c值> 0.8)。结论是,感染后立即从健康叶片中分离应力的最重要区域是1350-1750 nm和2200-2500 nm之间的光谱域。可见光波长,尤其是650-700 nm附近,在感染发展良好的感染阶段后三周变得越来越重要。对此类关键光谱区域的识别构成了基于高光谱图像开发鲁棒应力指示器的逻辑第一步。

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