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首页> 外文期刊>Transactions of the ASABE >Estimating regional winter wheat leaf N concentration with MERIS by integrating a field observation-based model and histogram matching.
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Estimating regional winter wheat leaf N concentration with MERIS by integrating a field observation-based model and histogram matching.

机译:通过结合基于实地观察的模型和直方图匹配,利用MERIS估算区域冬小麦叶片氮含量。

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摘要

Leaf nitrogen status is a key indicator for evaluating crop growth, yield potential, and grain quality. Non-destructive and rapid assessment of leaf nitrogen is required for improving nitrogen management in wheat production. The Medium-Resolution Imaging Spectrometer (MERIS), one of the payloads on ENVISAT, has an average 20 nm spectral resolution in the red edge region, a 300 m spatial resolution, and a 3-day repeat cycle, making MERIS a potentially valuable sensor for fast measurement and monitoring of crop N status at regional to global scales. The red edge can provide information related directly to the N concentration of vegetation. To develop a model for estimating crop N from field observations, winter wheat (Triticum aestivum L.) leaf nitrogen concentration (LNC) and spectral reflectance data in the North China Plain were collected. A comparison between spectral reflectance, its first derivative, and red edge parameters for estimating wheat LNC found that the red well position (RWP) is the best indicator of LNC (R2=0.60). A model was developed for LNC estimation with RWP, and the model was calibrated to the satellite imagery using a histogram matching method. A geo-rectified LNC map of Shandong and Henan provinces in the North China Plain was then generated from MERIS data. Validation with independent field observation data showed that the accuracy was higher than 95%, with root mean square error (RMSE) of 0.11 g N g-1 DW and a coefficient of determination (R2) of 0.90. This research will contribute to improving N fertilizer usage by mapping large-area winter wheat N status.
机译:叶氮状况是评估作物生长,单产潜力和谷物质量的关键指标。为了改善小麦生产中的氮管理,需要对叶氮进行无损和快速评估。中等分辨率成像光谱仪(MERIS)是ENVISAT的有效载荷之一,在红色边缘区域的平均光谱分辨率为20 nm,空间分辨率为300 m,重复周期为3天,这使MERIS成为潜在有价值的传感器在区域到全球范围内快速测量和监测作物氮素状况。红色边缘可以提供与植被的N浓度直接相关的信息。为了建立通过田间观测估算农作物氮的模型,收集了华北平原冬小麦的叶片氮浓度(LNC)和光谱反射率数据。通过光谱反射率,一阶导数和红边参数估算小麦的LNC,发现红井位(RWP)是LNC的最佳指标(R 2 = 0.60)。开发了使用RWP进行LNC估计的模型,并使用直方图匹配方法将模型校准为卫星图像。然后根据MERIS数据生成了华北平原山东省和河南省的地理校正LNC地图。独立现场观察数据的验证表明,该方法的准确度高于95%,均方根误差(RMSE)为0.11 g N g -1 DW,测定系数为(R 2 )。这项研究将通过绘制大面积冬小麦的氮素状况来帮助改善氮肥的使用。

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