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Predicting grain yield using canopy hyperspectral reflectance in wheat breeding data

机译:利用冠层高光谱反射率在小麦育种数据中预测谷物产量

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BackgroundModern agriculture uses hyperspectral cameras to obtain hundreds of reflectance data measured at discrete narrow bands to cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra, depending on the camera. This information is used to construct vegetation indices (VI) (e.g., green normalized difference vegetation index or GNDVI, simple ratio or SRa, etc.) which are used for the prediction of primary traits (e.g., biomass). However, these indices only use some bands and are cultivar-specific; therefore they lose considerable information and are not robust for all cultivars. ResultsThis study proposes models that use all available bands as predictors to increase prediction accuracy; we compared these approaches with eight conventional vegetation indexes (VIs) constructed using only some bands. The data set we used comes from CIMMYT’s global wheat program and comprises 1170 genotypes evaluated for grain yield (ton/ha) in five environments (Drought, Irrigated, EarlyHeat, Melgas and Reduced Irrigated); the reflectance data were measured in 250 discrete narrow bands ranging between 392 and 851?nm. The proposed models for the simultaneous analysis of all the bands were ordinal least square (OLS), Bayes B, principal components with Bayes B, functional B-spline, functional Fourier and functional partial least square. The results of these models were compared with the OLS performed using as predictors each of the eight VIs individually and combined. ConclusionsWe found that using all bands simultaneously increased prediction accuracy more than using VI alone. The Splines and Fourier models had the best prediction accuracy for each of the nine time-points under study. Combining image data collected at different time-points led to a small increase in prediction accuracy relative to models that use data from a single time-point. Also, using bands with heritabilities larger than 0.5 only in Drought as predictor variables showed improvements in prediction accuracy.
机译:背景技术现代农业使用高光谱相机来获取数百个在离散窄带上测得的反射率数据,以覆盖整个可见光谱以及部分红外和紫外光谱,具体取决于相机。该信息用于构造植被指数(VI)(例如绿色归一化差异植被指数或GNDVI,简单比率或SRa等),用于预测主要性状(例如生物量)。但是,这些指数仅使用某些条带,并且是特定品种的。因此,它们会丢失大量信息,并且对所有品种都不牢固。结果本研究提出了一种模型,该模型使用所有可用波段作为预测因子来提高预测准确性;我们将这些方法与仅使用某些波段构建的八个常规植被指数(VI)进行了比较。我们使用的数据集来自CIMMYT的全球小麦计划,包括在五个环境(干旱,灌溉,早热,梅尔加斯和减灌)中评估的1170个基因型的谷物单产(吨/公顷);反射率数据是在392和851?nm之间的250个离散窄带中测量的。提出的用于同时分析所有波段的模型是有序最小二乘(OLS),贝叶斯B,具有贝叶斯B的主成分,功能B样条,功能傅里叶和功能偏最小二乘。将这些模型的结果与单独使用并组合在一起的八个VI中的每个VI作为预测变量执行的OLS进行了比较。结论我们发现,与单独使用VI相比,使用所有频段同时提高了预测准确性。对于正在研究的九个时间点中的每一个,样条曲线和傅立叶模型都具有最佳的预测精度。相对于使用来自单个时间点数据的模型,将在不同时间点收集的图像数据进行组合会导致预测准确性的小幅提高。同样,仅在干旱中使用遗传度大于0.5的波段作为预测变量显示预测精度有所提高。

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