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Estimating Plant Traits of Grasslands from UAV-Acquired Hyperspectral Images: A Comparison of Statistical Approaches

机译:从无人机获得的高光谱图像估算草地植物性状:统计方法的比较

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摘要

Grassland ecosystems cover around 40% of the entire Earth’s surface. Therefore, it is necessary to guarantee good grassland management at field scale in order to improve its conservation and to achieve optimal growth. This study identified the most appropriate statistical strategy, between partial least squares regression (PLSR) and narrow vegetation indices, for estimating the structural and biochemical grassland traits from UAV-acquired hyperspectral images. Moreover, the influence of fertilizers on plant traits for grasslands was analyzed. Hyperspectral data were collected from an experimental field at the farm Haus Riswick, near Kleve in Germany, for two different flight campaigns in May and October. The collected image blocks were geometrically and radiometrically corrected for surface reflectance. Spectral signatures extracted for the plots were adopted to derive grassland traits by computing PLSR and the following narrow vegetation indices: the MERIS Terrestrial Chlorophyll Index (MTCI), the ratio of the Modified Chlorophyll Absorption in Reflectance and Optimized Soil-Adjusted Vegetation Index (MCARI/OSAVI) modified by Wu, the Red-edge Chlorophyll Index (CIred-edge), and the Normalized Difference Red Edge (NDRE). PLSR showed promising results for estimating grassland structural traits and gave less satisfying outcomes for the selected chemical traits (crude ash, crude fiber, crude protein, Na, K, metabolic energy). Established relations are not influenced by the type and the amount of fertilization, while they are affected by the grassland health status. PLSR is found to be the best strategy, among the approaches analyzed in this paper, for exploring structural and biochemical features of grasslands. Using UAV-based hyperspectral sensing allows for the highly detailed assessment of grassland experimental plots.
机译:草原生态系统覆盖了整个地球表面的约40%。因此,有必要在田间规模上保证良好的草地管理,以改善其养护和实现最佳生长。这项研究确定了最合适的统计策略,介于偏最小二乘回归(PLSR)和狭窄植被指数之间,用于从无人机获取的高光谱图像中估算草地的结构和生化特征。此外,分析了肥料对草原植物性状的影响。高光谱数据是从德国克莱夫(Kleve)附近的Haus Riswick农场的一个实验场收集的,该运动场于5月和10月进行了两次不同的飞行活动。对收集到的图像块进行几何和放射线校正的表面反射率。通过计算PLSR和以下窄植被指数,采用为该地块提取的光谱特征来得出草地特征:MERIS陆地叶绿素指数(MTCI),改良叶绿素吸收率的比值和最佳土壤调整植被指数(MCARI /由Wu,红边叶绿素指数(CIred-edge)和归一化差红边(NDRE)修改而成。 PLSR在估算草地结构性状方面显示出令人鼓舞的结果,而对所选化学性状(粗灰,粗纤维,粗蛋白,Na,K,代谢能)的令人满意的结果却不太令人满意。建立的关系不受施肥的类型和数量的影响,而受草地健康状况的影响。在本文分析的方法中,PLSR被认为是探索草原结构和生化特征的最佳策略。使用基于无人机的高光谱传感技术可以对草原实验区进行高度详细的评估。

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