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Image based remote sensing method for modeling black-eyed beans (Vigna unguiculata) Leaf Area Index (LAI) and Crop Height (CH) over Cyprus

机译:基于图像的塞浦路斯黑眼豆(Vigna unguiculata)叶面积指数(LAI)和作物高度(CH)建模的遥感方法

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摘要

In this paper, Leaf Area Index (LAI) and Crop Height (CH) are modeled to the most known spectral vegetation index — NDVI — using remotely sensed data. This approach has advantages compared to the classic approaches based on a theoretical background. A GER-1500 field spectro-radiometer was used in this study in order to retrieve the necessary spectrum data for estimating a spectral vegetation index (NDVI), for establishing a semiempirical relationship between black-eyed beans’ canopy factors and remotely sensed data. Such semi-empirical models can be used then for agricultural and environmental studies. A field campaign was undertaken with measurements of LAI and CH using the Sun-Scan canopy analyzer, acquired simultaneously with the spectroradiometric (GER1500) measurements between May and June of 2010. Field spectroscopy and remotely sensed imagery have been combined and used in order to retrieve and validate the results of this study. The results showed that there are strong statistical relationships between LAI or CH and NDVI which can be used for modeling crop canopy factors (LAI, CH) to remotely sensed data. The model for each case was verified by the factor of determination. Specifically, these models assist to avoid direct measurements of the LAI and CH for all the dates for which satellite images are available and support future users or future studies regarding crop canopy parameters.
机译:在本文中,使用遥感数据将叶面积指数(LAI)和作物高度(CH)建模为最知名的光谱植被指数NDVI。与基于理论背景的经典方法相比,该方法具有优势。在这项研究中,使用GER-1500场光谱辐射计来检索必要的光谱数据,以估算光谱植被指数(NDVI),从而建立黑眼豆冠层因子与遥感数据之间的半经验关系。这样的半经验模型可以用于农业和环境研究。使用Sun-Scan冠层分析仪对LAI和CH进行了测量,并于2010年5月至6月之间同时进行了光谱辐射(GER1500)测量。并验证这项研究的结果。结果表明,LAI或CH与NDVI之间存在很强的统计关系,可用于对作物冠层因子(LAI,CH)进行建模以获取遥感数据。通过确定因素验证每种情况的模型。具体而言,这些模型有助于避免在可获得卫星图像的所有日期中直接测量LAI和CH,并为将来的用户或有关作物冠层参数的未来研究提供支持。

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