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Assessment of Unmanned Aerial Vehicles Imagery for Quantitative Monitoring of Wheat Crop in Small Plots

机译:小地块中小麦作物定量监测的无人机图像评估

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摘要

This paper outlines how light Unmanned Aerial Vehicles (UAV) can be used in remote sensing for precision farming. It focuses on the combination of simple digital photographic cameras with spectral filters, designed to provide multispectral images in the visible and near-infrared domains. In 2005, these instruments were fitted to powered glider and parachute, and flown at six dates staggered over the crop season. We monitored ten varieties of wheat, grown in trial micro-plots in the South-West of France. For each date, we acquired multiple views in four spectral bands corresponding to blue, green, red, and near-infrared. We then performed accurate corrections of image vignetting, geometric distortions, and radiometric bidirectional effects. Afterwards, we derived for each experimental micro-plot several vegetation indexes relevant for vegetation analyses. Finally, we sought relationships between these indexes and field-measured biophysical parameters, both generic and date-specific. Therefore, we established a robust and stable generic relationship between, in one hand, leaf area index and NDVI and, in the other hand, nitrogen uptake and GNDVI. Due to a high amount of noise in the data, it was not possible to obtain a more accurate model for each date independently. A validation protocol showed that we could expect a precision level of 15% in the biophysical parameters estimation while using these relationships.
机译:本文概述了如何将轻型无人机(UAV)用于精确农业的遥感。它着重于将简单的数码相机与光谱滤镜相结合,以提供可见和近红外域的多光谱图像。在2005年,这些仪器安装在动力滑翔机和降落伞上,并在农作物季节的六个日期交错飞行。我们监测了十种在法国西南部通过微型试验种植的小麦。对于每个日期,我们都在对应于蓝色,绿色,红色和近红外的四个光谱带中获取了多个视图。然后,我们对图像渐晕,几何变形和辐射双向效果进行了准确的校正。然后,我们为每个实验微图得出与植被分析相关的几种植被指数。最后,我们寻求这些指标与现场测量的生物物理参数(通用和特定日期)之间的关系。因此,我们一方面建立了叶面积指数和NDVI之间的稳健和稳定的通用关系,另一方面又建立了氮素吸收和GNDVI之间的关系。由于数据中存在大量噪声,因此无法独立获得每个日期的更准确模型。验证协议表明,使用这些关系时,我们预计生物物理参数估计的精度水平为15%。

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