首页> 外文期刊>International journal of applied earth observation and geoinformation >Improved nitrogen retrievals with airborne-derived fluorescence and plant traits quantified from VNIR-SWIR hyperspectral imagery in the context of precision agriculture
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Improved nitrogen retrievals with airborne-derived fluorescence and plant traits quantified from VNIR-SWIR hyperspectral imagery in the context of precision agriculture

机译:在精密农业的背景下改善了从VNIR-SWIR高光谱图像中量化的空气传播源型荧光和植物性状的氮气检索

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In semi-arid conditions, nitrogen (N) is the main limiting factor of crop yield after water, and its accurate quantification remains essential. Recent studies have demonstrated that solar-induced chlorophyll fluorescence (SW) quantified from hyperspectral imagery is a reliable indicator of photosynthetic activity in the context of precision agriculture and for early stress detection purposes. The role of fluorescence might be critical to our understanding of N levels due to its link with photosynthesis and the maximum rate of carboxylation (Vcmax) under stress. The research presented here aimed to assess the contribution played by airborne-retrieved solar-induced chlorophyll fluorescence (SIF) to the retrieval of N under irrigated and rainfed Mediterranean conditions. The study was carried out at three field sites used for wheat phenotyping purposes in Southern Spain during the 2015 and 2016 growing seasons. Airborne campaigns acquired imagery with two hyperspectral cameras covering the 400-850 nm (20 cm resolution) and 950-1750 mn (50 cm resolution) spectral regions. The performance of multiple regression models built for N quantification with and without including the airborne-retrieved SIF was compared with the performance of models built with plant traits estimated by model inversion, and also with standard approaches based on single spectral indices. Results showed that the accuracy of the models for N retrieval increased when chlorophyll fluorescence was included (r(LOOCV )(2)= 0.92; p 0.0005) as compared to models only built with chlorophyll a + b (C-ab), dry matter (C-m) and equivalent water thickness (C-w) plant traits (r(LOOCV)(2) ranged from 0.68 to 0.77; p 0.005). Moreover, nitrogen indices (NIs) centered at 1510 nm yielded more reliable agreements with N concentration (r(2) = 0.69) than traditional chlorophyll indices (TCARI/ OSAVI r(2) = 0.45) and structural indices (NDVI r(2) = 0.57) calculated in the VNIR region. This work demonstrates that under irrigated and non-irrigated conditions, indicators directly linked with photosynthesis such as chlorophyll fluorescence improves predictions of N concentration.
机译:在半干旱条件下,氮气(n)是水后作物产量的主要限制因素,其准确的定量仍然是必不可少的。最近的研究表明,从高光谱图像量化的太阳能诱导的叶绿素荧光(SW)是精密农业的背景下的光合作用活动的可靠指标,以及用于早期应力检测目的。由于其与应力下的羧化(Vcmax)的链接,荧光的作用对于我们对N水平的理解至关重要。这里提出的研究旨在评估空中检索的太阳能诱导的叶绿素荧光(SIF)在灌溉和雨量的地中海条件下检索N的贡献。该研究是在2015年和2016年在2015年和2016年生长季节的南部西班牙小麦表型目的的三个田间部位进行。空中竞选采用带有两个高光谱相机的图像,覆盖400-850 nm(20厘米分辨率)和950-1750 mn(50cm分辨率)光谱区域。将用于N个定量的多元回归模型的性能与使用模型反转估计的植物特征构建的模型的性能进行了比较,以及基于单光谱索引的标准方法。结果表明,当包括叶绿素A + B(C-AB(C-AB)(C-AB)相比,当包括叶绿素荧光时,当包括叶绿素荧光时,N检索的模型的准确性增加),干物质(Cm)和等效水厚度(CW)植物性状(R(LOOCV)(2)的范围为0.68至0.77; p <0.005)。此外,以1510nm为中心的氮索引(NIS)产生比传统叶绿素指数的n浓度(R(2)= 0.69)的更可靠的协议(Tcari / Osavi R(2)= 0.45)和结构指数(NDVI R(2))在VNIR区域计算的= 0.57)。这项工作表明,在灌溉和非灌溉条件下,与光合作用的指示剂如叶绿素荧光直接连接,改善了N浓度的预测。

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