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Comparing vineyard imagery acquired from Sentinel-2 and Unmanned Aerial Vehicle (UAV) platform

机译:比较来自Sentinel-2和无人机(UAV)平台的葡萄园图像

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Aim: The recent availability of Sentinel-2 satellites has led to an increasing interest in their use in viticulture. The aim of this short communication is to determine performance and limitation of a Sentinel-2 vegetation index in precision viticulture applications, in terms of correlation and variability assessment, compared to the same vegetation index derived from an unmanned aerial vehicle (UAV). Normalised difference vegetation index (NDVI) was used as reference vegetation index. Methods and Results: UAV and Sentinel-2 vegetation indices were acquired for 30 vineyard blocks located in the south of France without inter-row grass. From the UAV imagery, the vegetation index was calculated using both a mixed pixels approach (both vine and inter-row) and from pure vine-only pixels. In addition, the vine projected area data were extracted using a support vector machine algorithm for vineyard segmentation. The vegetation index was obtained from Sentinel-2 imagery obtained at approximately the same time as the UAV imagery. The Sentinel-2 images used a mixed pixel approach as pixel size is greater than the row width. The correlation between these three layers and the Sentinel-2 derived vegetation indices were calculated, considering spatial autocorrelation correction for the significance test. The Gini coefficient was used to estimate variability detected by each sensor at the within-field scale. The effects of block border and dimension on correlations were estimated. Conclusions: The comparison between Sentinel-2 and UAV vegetation index showed an increase in correlation when border pixels were removed. Block dimensions did not affect the significance of correlation unless blocks were < 0.5 ha. Below this threshold, the correlation was non-significant in most cases. Sentinel-2 acquired data were strongly correlated with UAV-acquired data at both the field (R~(2) = 0.87) and sub-field scale (R~(2) = 0.84). In terms of variability detected, Sentinel-2 proved to be able to detect the same amount of variability as the UAV mixed pixel vegetation index. Significance and impact of the study: This study showed at which field conditions the Sentinel-2 vegetation index can be used instead of UAV-acquired images when high spatial resolution (vine-specific) management is not needed and the vineyard is characterised by no inter-row grass. This type of information may help growers to choose the most appropriate information sources to detect variability according to their vineyard characteristics.
机译:目的:最近的Sentinel-2卫星的可用性导致对葡萄栽培的使用越来越令人兴趣。这种简短的沟通的目的是在相关性和可变性评估方面确定在精确葡萄栽培应用中的Sentinel-2植被指数的性能和限制,与来自无人驾驶飞行器(UAV)的相同植被指数相比。归一化差异植被指数(NDVI)用作参考植被指数。方法和结果:在法国南部的30个葡萄园块中获得了UAV和Sentinel-2植被指数,没有行中的草丛。从UAV Imagery,使用混合像素方法(vine和行)和纯vine的像素来计算植被指数。此外,使用支持向量机算法提取葡萄园预计区域数据,用于葡萄园分割。植被指数从哨兵-2图像获得,在大致与UAV图像大致相同的时间。 Sentinel-2图像使用混合像素方法,作为像素尺寸大于行宽度。计算这三层和哨兵-2衍生植被指数之间的相关性,考虑了用于显着测试的空间自相关校正。基尼系数用于估计在现场范围内由每个传感器检测的可变性。估计块边界和尺寸对相关性的影响。结论:Sentinel-2和UAV植被指数之间的比较显示出边界像素时相关的相关性。块尺寸不影响相关性的重要性,除非块<0.5公顷。在此阈值以下,在大多数情况下,相关性在很大。 Sentinel-2获取的数据与Field(R〜(2)= 0.87)和子场比例(R〜(2)= 0.84)强烈相关的数据。在检测到的可变性方面,Sentinel-2证明能够检测与UAV混合像素植被指数相同的可变性。该研究的意义和影响:本研究显示,当不需要高空间分辨率(葡萄纲的)管理时,可以使用哨子-2植被指数的现场条件代替无人机获取的图像,而葡萄园的特征在于 - 草。这种类型的信息可以帮助种植者选择根据其葡萄园特征来检测可变性的最合适的信息来源。

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