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Detecting leaf nitrogen content in wheat with canopy hyperspectrum under different soil backgrounds

机译:不同土壤背景下冠层高光谱法测定小麦叶片氮含量。

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Hyperspectral sensing techniques can be effective for rapid, non-destructive detecting of the nitrogen (N) status in crop plants; however, their accuracy is often affected by the soil background. Under different fractions of soil background, the canopy spectra and leaf nitrogen content (LNC) in winter wheat (Triticum aestivum L.) were obtained from field experiments with different N rates and planting densities over 3 growing seasons. Five types of vegetation index (VIs: normalized difference vegetation index (NDVI), ratio vegetation index (RVI), soil adjusted vegetation index (SAVI), optimize soil adjusted vegetation index (O SAVI), and perpendicular vegetation index (PVI)) were constructed based on three types of spectral information: (1) the original and the first derivative (FD) spectrum, (2) the spectrum adjusted with the vegetation coverage (FV_(cover)), and (3) the pure spectrum extracted by a linear mixed model. Comprehensive relationships of above five types of VI with LNC were quantified for LNC detecting under different soil backgrounds. The results indicated that all five types of VI were significantly affected by the soil background, with R2 values of around 0.55 for LNC detecting, with the OSAVI (R_(514), R)(469))_(L-0.04) producing the best performance of all five indices. However, based on the FV_(cover), the coverage adjusted spectral index (CASI = NDVI(R_(513), R_(481))/(1 + FV_(cover)) produced the higher R~2 value of 0.62 and the lower RRMSE of 13%, and was less sensitive to the leaf area index (LAI), leaf dry weight (LDW), FV_(cover), and leaf nitrogen accumulation (LNA). The results demonstrate that the newly developed CASI could improve the performance of LNC estimation under different soil backgrounds.
机译:高光谱传感技术可以快速,无损地检测农作物中的氮(N)状态。但是,其准确性通常受土壤背景的影响。在不同背景下,通过3个生长季不同氮素和种植密度的田间试验获得了冬小麦(Triticum aestivum L.)的冠层光谱和叶片氮含量(LNC)。五种植被指数(VI:归一化差异植被指数(NDVI),比率植被指数(RVI),土壤调整植被指数(SAVI),优化土壤调整植被指数(O SAVI)和垂直植被指数(PVI))基于三种类型的光谱信息构建的:(1)原始光谱和一阶导数(FD)光谱;(2)根据植被覆盖度(FV_(cover))调整的光谱;(3)由a提取的纯光谱线性混合模型。定量了以上五种VI与LNC的综合关系,以用于在不同土壤背景下进行LNC检测。结果表明,所有五种VI均受土壤背景的显着影响,用于LNC检测的R2值约为0.55,而OSAVI(R_(514),R)(469))_(L-0.04)产生所有五个指数的最佳表现。但是,基于FV_(cover),覆盖范围调整后的光谱指数(CASI = NDVI(R_(513),R_(481))/(1 + FV_(cover))产生较高的R〜2值0.62,并且RRMSE降低了13%,并且对叶面积指数(LAI),叶干重(LDW),FV_(cover)和叶氮积累(LNA)较不敏感,结果表明,新开发的CASI可以改善叶绿素不同土壤背景下LNC估算的性能

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