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首页> 外文期刊>The Journal of Agricultural Science >Estimation of leaf total chlorophyll and nitrogen concentrations using hyperspectral satellite imagery.
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Estimation of leaf total chlorophyll and nitrogen concentrations using hyperspectral satellite imagery.

机译:高光谱卫星图像估计叶片总叶绿素和氮浓度的估计。

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摘要

Remotely sensed estimates of biochemical parameters of agricultural crops are central to the precision management of agricultural crops (precision farming). Past research using in situ and airborne spectral reflectance measurements of various vegetation species has proved the usefulness of hyperspectral data for the estimation of various biochemical parameters of vegetation. In order to exploit the vast spectral and radiometric resources offered by space-borne hyperspectral remote sensing for the improved estimation of plant biochemical parameters, the relationships observed between spectral reflectance and various biochemical parameters at in situ and airborne levels needed to be evaluated in order to establish the existence of a reliable and stable relationship between spectral reflectance and plant biochemical parameters at the pixel scale. The potential of the EO-1 Hyperion hyperspectral sensor was investigated for the estimation of total chlorophyll and nitrogen concentrations of cotton crops in India by developing regression models between hyperspectral reflectance and laboratory measurements of leaf total chlorophyll and nitrogen concentrations. A comprehensive and rigorous analysis was carried out to identify the spectral bands and spectral indices for accurate retrieval of leaf total chlorophyll and nitrogen concentrations of cotton crop. The performance of these critical spectral reflectance indices was validated using independent samples. A new vegetation index, named the plant biochemical index (PBI), is proposed for improved estimation of the plant biochemicals from space-borne hyperspectral data; it is simply the ratio of reflectance at 810 and 560 nm. Further, the applicability of PBI to a different crop and at a different geographical location was also assessed. The present results suggest the use of space-borne hyperspectral data for accurate retrieval of leaf total chlorophyll and nitrogen concentrations and the proposed PBI has the potential to retrieve leaf total chlorophyll and nitrogen concentrations of various crops and at different geographical locations.
机译:农业作物生化参数的远程感官估计是农业作物精确管理的核心(精密养殖)。过去的研究使用原位和空中光谱反射率测量各种植被物种已经证明了高光谱数据估算植被各种生化参数的有用性。为了利用空间高光谱遥感所提供的广泛的光谱和辐射测量,用于改进植物生化参数的估计,在原位和空气中水平处观察到的频谱反射率和各种生化参数之间的关系,以便进行评估在像素尺度上建立频谱反射和植物生化参数之间可靠稳定的关系。通过在叶片总叶绿素和氮浓度的实验室测量之间开发回归模型,研究了EO-1 Hyperion高光谱传感器的潜力,用于估计印度的棉花作物的总叶绿素和氮浓度。进行了全面且严谨的分析,以确定光谱带和光谱索引,用于准确检索叶片总叶绿素和棉作物的氮浓度。使用独立的样本验证了这些关键光谱反射率指数的性能。提出了一种名为植物生化指数(PBI)的新植被指数,以改善空间型高光谱数据的植物生化估计;它只是810和560nm处的反射比率。此外,还评估了PBI对不同作物和不同地理位置的适用性。目前的结果表明,使用空间高光谱数据以精确检索叶片总叶绿素和氮浓度,并且所提出的PBI具有可能检索各种作物和不同地理位置的叶片总叶绿素和氮浓度。

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