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Nitrogen Status Assessment for Variable Rate Fertilization in Maize through Hyperspectral Imagery

机译:利用高光谱成像技术评估玉米变量施肥的氮素状况

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This paper presents a method for mapping the nitrogen (N) status in a maize field using hyperspectral remote sensing imagery. An airborne survey was conducted with an AISA Eagle hyperspectral sensor over an experimental farm where maize (Zea mays L.) was grown with two N fertilization levels (0 and 100 kg N ha−1) in four replicates. Leaf and canopy field data were collected during the flight. The nitrogen (N) status has been estimated in this work based on the Nitrogen Nutrition Index (NNI), defined as the ratio between the leaf actual N concentration (%Na) of the crop and the minimum N content required for the maximum biomass production (critical N concentration (%Nc)) calculated through the dry mass at the time of the flight (Wflight). The inputs required to calculate the NNI (i.e., %Na and Wflight) have been estimated through regression analyses between field data and remotely sensed vegetation indices. MCARI/MTVI2 (Modified Chlorophyll Absorption Ratio Index/Modified Triangular Vegetation Index 2) showed the best performances in estimating the %Na (R2 = 0.59) and MTVI2 in estimating the Wflight (R2 = 0.80). The %Na and the Wflight were then mapped and used to compute the NNI map over the entire field. The NNI map agreed with the NNI estimated using field data through traditional destructive measurements (R2 = 0.70) confirming the potential of using remotely sensed indices to assess the crop N condition. Finally, a method to derive a pixel based variable rate N fertilization map was proposed as the difference between the actual N content and the optimal N content. We think that the proposed operational methodology is promising for precision farming since it represents an innovative attempt to derive a variable rate N fertilization map based on the actual crop N status from an aerial hyperspectral image.
机译:本文提出了一种利用高光谱遥感影像绘制玉米田中氮素状况的方法。用AISA Eagle高光谱传感器在一个实验农场进行了一次航空调查,在该实验农场中,玉米(Zea mays L.)以两个氮肥水平(0和100 kg N ha -1 )进行了四次重复种植。在飞行过程中收集了叶和冠层田间数据。在这项工作中,根据氮营养指数(NNI)估算了氮(N)的含量,氮营养指数是指作物的叶片实际氮浓度(%N a )与最低氮之间的比率。通过飞行时的干燥质量(飞行 c )计算出的最大生物量生产所需的氮含量(临界氮浓度(%N c ))。通过野外数据和遥感植被指数之间的回归分析,估算了计算NNI所需的输入(即%N a 和W flight )。叶绿素吸收比指数/三角植被指数2的MCARI / MTVI2在估计%N a (R 2 = 0.59)和MTVI2的估计中表现最佳W 航班(R 2 = 0.80)。然后将%N a 和W flight 映射并用于计算整个字段的NNI映射。 NNI图与通过传统破坏性测量(R 2 = 0.70)使用田间数据估算的NNI一致,证实了使用遥感指数评估作物N状况的潜力。最后,提出了一种基于像素的可变氮素施肥图的推导方法,作为实际氮素含量与最佳氮素含量之间的差异。我们认为,所提出的操作方法论对于精确耕作是有希望的,因为它代表了根据航空高光谱图像基于实际作物N状态得出可变速率N施肥图的创新尝试。

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