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Detection of wine grape nutrient levels using visible and near infrared 1 nm spectral resolution remote sensing

机译:使用可见光和近红外1 nm光谱分辨率遥感检测葡萄酒中的营养成分

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The grape industry relies on regular crop assessment to aid in the day-to-day and seasonal management of their crop. More specifically, there are six key nutrients of interest to viticulturists in the growing of wine grapes, namely nitrogen, potassium, phosphorous, magnesium, zinc and boron. Traditional methods of determining the levels of these nutrients are through collection and chemical analysis of petiole samples from the grape vines themselves. We collected ground-level observations of the spectra of the grape vines, using a hyperspectral spectrometer (0.4-2.5um), at the same time that petioles samples were harvested. We then interpolated the data into a consistent 1 nm spectral resolution before comparing it to the nutrient data collected. This nutrient data came from both the industry standard petiole analysis, as well as an additional leaf-level analysis. The data were collected for two different grape cultivars, both during bloom and veraison periods to provide variability, while also considering the impact of temporal/seasonal change. A narrow-band NDI (Normalized Difference Index) approach, as well as a simple ratio index, was used to determine the correlation of the reflectance data to the nutrient data. This analysis was limited to the silicon photodiode range to increase the utility of our approach for wavelength-specific cameras (via spectral filters) in a low cost drone platform. The NDI generated correlation coefficients were as high as 0.80 and 0.88 for bloom and veraison, respectively. The ratio index produced correlation coefficient results that are the same at two decimal places with 0.80 and 0.88. These results bode well for eventual non-destructive, accurate and precise assessment of vineyard nutrient status.
机译:葡萄行业依靠定期的农作物评估来帮助他们的农作物的日常和季节性管理。更具体地说,葡萄栽培者在酿酒葡萄的生长中有六种重要的营养素,即氮,钾,磷,镁,锌和硼。确定这些养分含量的传统方法是通过收集和化学分析葡萄藤本身的叶柄样品。我们在收获叶柄样品的同时,使用高光谱仪(0.4-2.5um)收集了葡萄树光谱的地面观测资料。然后,我们将数据内插为一致的1 nm光谱分辨率,然后将其与收集的营养数据进行比较。这些营养素数据来自行业标准的叶柄分析以及其他叶水平分析。在开花和确证期间收集了两个不同葡萄品种的数据,以提供变异性,同时还考虑了时间/季节变化的影响。使用窄带NDI(归一化差异指数)方法以及简单的比率指数来确定反射率数据与养分数据的相关性。此分析仅限于硅光电二极管范围,以提高我们的方法在低成本无人机平台中用于特定波长相机(通过光谱滤镜)的实用性。 NDI生成的相关系数对于水华和花色分别高达0.80和0.88。比率指数产生的相关系数结果在小数点后两位分别为0.80和0.88。这些结果预示着最终对葡萄园养分状况的无损,准确和精确评估。

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