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Detection of chlorophyll and leaf area index dynamics from sub-weeklyhyperspectral imagery

机译:叶绿素和叶片区域指数动态的检测来自亚周的分号图像

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Temporally rich hyperspectral time-series can provide unique time critical information on within-field variations in vegetation health and distribution needed by farmers to effectively optimize crop production. In this study, a dense time-series of images were acquired from the Earth Observing-1 (EO-1) Hyperion sensor over an intensive farming area in the center of Saudi Arabia. After correction for atmospheric effects, optimal links between carefully selected explanatory hyperspectral vegetation indices and target vegetation characteristics were established using a machine learning approach. A dataset of in-situ measured leaf chlorophyll (Chli) and leaf area index (LAI), collected during five intensive field campaigns over a variety of crop types,were used to train the rule-based predictive models. The ability of the narrow-band hyperspectral reflectance information to robustly assess and discriminate dynamics in foliar biochemistry and biomass through empirical relationships were investigated. This also involved evaluations of the generalization and reproducibility of the predictions beyond the conditions of the training dataset. The very high temporal resolution of the satellite retrievals constituted a specifically intriguing feature that facilitated detection of total canopy Chi and LAI dynamics down to sub-weekly intervals. The study advocates the benefits associated with the availability of optimum spectral and temporal resolution spaceborne observations for agricultural management purposes.
机译:富有的高光谱时间系列可以提供有关农民所需的植被健康和分布的现场内变化的独特时间关键信息,以有效优化作物生产。在这项研究中,致密的时间序列图像的经在沙特阿拉伯的中心的集约农业区从地球观测-1(EO-1)海波传感器获取。在校正大气效应后,使用机器学习方法建立精心挑选的解释性高光谱植被指数和靶植被特征之间的最佳连接。原位测量叶绿素(Chli)和叶面积指数(LAI)的数据集,在以上各种作物类型五个密集场运动收集,用于训练基于规则的预测模型。研究了窄带高光谱信息对叶面生物化学和生物质的鲁棒性评估和区分动力学的能力进行了研究。这也涉及超出培训数据集条件的预测的泛化和再现性的评估。卫星检索的非常高的时间分辨率构成的具体耐人寻味功能,易化检测总篷驰和LAI动力学的向下的子周间隔。该研究倡导与农业管理目的的最佳光谱和时间分辨率的空间观测相关的益处。

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