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COMPARING BROAD-BAND AND RED EDGE-BASED SPECTRAL VEGETATION INDICES TO ESTIMATE NITROGEN CONCENTRATION OF CROPS USING CASI DATA

机译:基于宽带和红色的光谱植被指数比较使用CASI数据估算作物的氮浓度

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In recent decades, many spectral vegetation indices (SVIs) have been proposed to estimate the leaf nitrogen concentration (LNC) of crops. However, most of these indices were based on the field hyperspectral reflectance. To test whether they can be used in aerial remote platform effectively, in this work a comparison of the sensitivity between several broad-band and red edge-based SVIs to LNC is investigated over different crop types. By using data from experimental LNC values over 4 different crop types and image data acquired using the Compact Airborne Spectrographic Imager (CASI) sensor, the extensive dataset allowed us to evaluate broad-band and red edge-based SVIs. The result indicated that NDVI performed the best among the selected SVIs while red edge-based SVIs didn't show the potential for estimating the LNC based on the CASI data due to the spectral resolution. In order to search for the optimal SVIs, the band combination algorithm has been used in this work. The best linear correlation against the experimental LNC dataset was obtained by combining the 626.20nm and 569.00nm wavebands. These wavelengths correspond to the maximal chlorophyll absorption and reflection position region, respectively, and are known to be sensitive to the physiological status of the plant. Then this linear relationship was applied to the CASI image for generating an LNC map, which can guide farmers in the accurate application of their N fertilization strategies.
机译:近几十年来,已经提出了许多光谱植被指数(SVIS)来估计作物的叶片氮浓度(LNC)。然而,大多数这些指数都基于现场极高光谱反射率。为了测试它们是否可以有效地在空中远程平台中使用,在该工作中,在不同的作物类型上研究了几个宽带和红色的SVIS与LNC之间的敏感性之间的灵敏度的比较。通过使用从使用小型机载光谱分析成像仪(CASI)传感器获得的实验值LNC超过4不同作物种类和图像数据的数据,该数据集广泛使我们能够评估宽带和红色基于边缘的SVIS。结果表明,NDVI在所选择的SVI中执行最佳,而基于红色的SVIS没有显示基于CASI数据估计LNC的可能性。为了搜索最佳SVI,在这项工作中已经使用了频带组合算法。通过组合626.20nm和569.00nm波段获得与实验性LNC数据集的最佳线性相关性。这些波长分别对应于最大叶绿素吸收和反射位置区域,并且已知对植物的生理状态敏感。然后将这种线性关系应用于CASI图像,以产生LNC地图,可以在准确地应用其N施肥策略中引导农民。

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