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首页> 外文期刊>American journal of enology & viticulture >Comparison of Different Vegetative Indices for Calibrating Proximal Canopy Sensors to Grapevine Pruning Weight
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Comparison of Different Vegetative Indices for Calibrating Proximal Canopy Sensors to Grapevine Pruning Weight

机译:校准近端冠层传感器对葡萄树修剪重量的不同植物指数的比较

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Canopy sensing in viticulture is widely associated with the term NDVI (normalized difference vegetation index). However, there are many other vegetative indices (VIs) that can be calculated from information captured with visible/near-infrared (NIR) sensors. A proximal canopy sensor was used to survey 27 vineyards in the Lake Erie Concord belt and stratified to collect pruning weights (PW) at a density of ~25 samples per vineyard. Seven VIs were derived from the sensor data and the first principal component (PCI) extracted from a principal components analysis of the seven VIs. The VIs and PCI were regressed against the local PW measurements and ranked in terms of their goodness-of-fit. Over the 27 vineyards, there was no single Ⅵ that outperformed the others, although VIs that used the red-edge band had a slight advantage over VIs using the red band. It is therefore recommended to use the normalized difference red edge index (NDRE) in place of the NDVI when predicting PW from terrestrial-based proximal canopy surveys. The PCI derived from the decomposition of all seven VIs did appear to convey some benefit to PW prediction compared with a single Ⅵ approach, particularly with just NDVI. More research into the potential for multivariate approaches is recommended.
机译:在葡萄栽培中的树冠感应与NDVI术语(归一化差异植被指数)广泛相关。然而,还有许多其他植物索引(VI)可以根据具有可见/近红外(NIR)传感器捕获的信息来计算。近端冠层传感器用于调查伊利康康乐队湖中的27个葡萄园,并分层以收集每个葡萄园的〜25个样品的密度收集修剪重量(PW)。从传感器数据和从七个VI的主要成分分析中提取的传感器数据和第一个主成分(PCI)衍生出七个VI。 VI和PCI对本地PW测量的回归,并以其适合的良好而排名。在27个葡萄园中,没有单一的单一表现出其他人,尽管使用红边频带的VIS使用红色频段略有优势。因此,在预测基于地面的近端冠层调查的预测时,建议使用归一化差异红色索引(NDRE)代替NDVI。与单次方法相比,从所有七个VI的分解的PCI似乎似乎对PW预测传达了一些好处,特别是与单一的方法相比,特别是NDVI。建议更多地研究了多变量方法的潜力。

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