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Combining hyperspectral UAV and multispectral Formosat-2 imagery for precision agriculture applications

机译:将高光谱无人机和多光谱Formosat-2影像相结合,用于精确农业应用

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Remote sensing is a key tool for precision agriculture applications as it is capable of capturing spatial and temporal variations in crop status. However, satellites often have an inadequate spatial resolution for precision agriculture applications. High-resolution Unmanned Aerial Vehicles (UAV) imagery can be obtained at flexible dates, but operational costs may limit the collection frequency. The current study utilizes data fusion to create a dataset which benefits from the temporal resolution of Formosat-2 imagery and the spatial resolution of UAV imagery with the purpose of monitoring crop growth in a potato field. The correlation of the Weighted Difference Vegetation Index (WDVI) from fused imagery to measured crop indicators at field level and added value of the enhanced spatial and temporal resolution are discussed. The results of the STARFM method were restrained by the requirement of same-day base imagery. However, the unmixing-based method provided a high correlation to the field data and accurately captured the WDVI temporal variation at field level (r=0.969).
机译:遥感是精确农业应用的关键工具,因为它能够捕获作物状况的时空变化。但是,对于精密农业应用,卫星的空间分辨率通常不足。可以在灵活的日期获取高分辨率的无人机(UAV)图像,但运营成本可能会限制采集频率。当前的研究利用数据融合创建了一个数据集,该数据集受益于Formosat-2影像的时间分辨率和UAV影像的空间分辨率,目的是监视马铃薯田中的作物生长。讨论了融合影像的加权差异植被指数(WDVI)与实地测量的作物指标之间的相关性以及增强的时空分辨率的附加值。 STARFM方法的结果受到当日基础图像的要求的限制。然而,基于分解的方法提供了与现场数据的高度相关性,并在现场水平上准确捕获了WDVI的时间变化(r = 0.969)。

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