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Deriving phenology of barley with imaging hyperspectral remote sensing

机译:利用成像高光谱遥感推导大麦物候

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The aim of this paper was to create a model that predicts the different phenological BBCH macro-stages of barley in laboratory on the plot scale and to transfer the most suitable model to the landscape scale. To characterise the phenology, eight vitality and phenology-related vegetation parameters like leaf area index (LAI), Chl-SPAD content, C-content, N-content, C/N-content, canopy chlorophyll content (CCC), gravimetric water content (GWC) and vegetation height at the same time as all imaging hyperspectral measurements (AISA-EAGLE, 395-973 nm). These biochemical-biophysical vegetation parameters were investigated according to the different phenological macro-stages of barley. The predictive models were developed using four different types of vegetation indices (VI): (I) published VI's, (II) reflectance VI's as well as (III) VI(xy) formula combinations and (IV) a combination of all VI index types using the Library for Support Vector Machines (LibSVM) and tested with a recursive conditional correlation weighting selection algorithm (RCCW) to reduce the number of variables. To increase the performance of the model a 10-fold cross-validation was carried out for all statistical models. The GWC was found to be the most important variable for differentiating between the phenological macro-stages of barley. The most suitable model for predicting the phenological BBCH macro-stages was achieved by a model that combined all three kinds of VI's: published VI's, reflectance VI's and formula combination VI's with a classification accuracy of 84.80%. With the classification model for the reflectance VI's Y = 746 nm and for the VI formula combinations Y = (527 + 612) nm and Y = (540 + 639) nm. The best predictive model was applied to the airborne AISA-EAGLE hyperspectral data to model the phenological macro-stages of barley at the landscape level. The classification error of the best predictive model of 12.80% as well as disturbance factors such as channels and areas with weeds or ruderal vegetation lead to misclassifications of BBCH macro-stages at the landscape level. By using One Sensor At Different Scales-Approach (OSADIS), sensor-specific differences in the model building and model transfer can be eliminated. The approach described in the paper for determining the phenology based on imaging hyperspectral RS data shows that in the process of plant phonological development a number of biochemical-biophysical vegetation traits in vegetation change, which can be thoroughly recorded with hyperspectral remote sensing technology. For this reason, hyperspectral RS constitutes an ideal, cost-effective and comparable approach, with whose help vegetation traits and changes can be quantified, which are key for ecological modelling. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文的目的是创建一个模型,在样地尺度上预测大麦在物候学上不同的BBCH宏观阶段,并将最合适的模型转换为景观尺度。为了描述物候,描述了八个与生命力和物候有关的植被参数,例如叶面积指数(LAI),Chl-SPAD含量,C含量,N含量,C / N含量,冠层叶绿素含量(CCC),重量水含量所有成像高光谱测量(AISA-EAGLE,395-973 nm)同时显示(GWC)和植被高度。根据大麦物候不同的宏观阶段,研究了这些生化-生物物理植被参数。使用四种不同类型的植被指数(VI)开发了预测模型:(I)已发布的VI,(II)反射VI和(III)VI(xy)公式组合,以及(IV)所有VI指数类型的组合使用支持向量机库(LibSVM)并通过递归条件相关权重选择算法(RCCW)进行了测试,以减少变量的数量。为了提高模型的性能,对所有统计模型进行了10倍交叉验证。发现GWC是区分大麦物候宏观阶段的最重要变量。通过组合所有三种VI(已发布的VI,反射VI和公式组合VI)的分类模型,可以最准确地预测BBCH物候阶段,该模型的分类精度为84.80%。对于反射率VI的分类模型,Y = 746 nm,对于VI公式,组合Y =(527 + 612)nm和Y =(540 + 639)nm。将最佳预测模型应用于机载AISA-EAGLE高光谱数据,以模拟大麦在景观水平上的物候宏观阶段。最佳预测模型的分类误差为12.80%,以及干扰因素(例如通道和杂草或草植被的区域)会导致BBCH宏观阶段在景观水平上的错误分类。通过使用一个不同比例的传感器(OSADIS),可以消除模型构建和模型传递中特定于传感器的差异。本文描述的基于高光谱遥感影像数据确定物候的方法表明,在植物语音发展过程中,植被变化中的许多生化-生物物理植被特征可以用高光谱遥感技术彻底记录。因此,高光谱遥感技术是一种理想的,具有成本效益的和可比的方法,借助它可以量化植被特征和变化,这是生态建模的关键。 (C)2014 Elsevier B.V.保留所有权利。

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