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Leaf Area Index Estimation Using Chinese GF-1 Wide Field View Data in an Agriculture Region

机译:利用中国GF-1广角视野数据估算农业区域的叶面积指数

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Leaf area index (LAI) is an important vegetation parameter that characterizes leaf density and canopy structure, and plays an important role in global change study, land surface process simulation and agriculture monitoring. The wide field view (WFV) sensor on board the Chinese GF-1 satellite can acquire multi-spectral data with decametric spatial resolution, high temporal resolution and wide coverage, which are valuable data sources for dynamic monitoring of LAI. Therefore, an automatic LAI estimation algorithm for GF-1 WFV data was developed based on the radiative transfer model and LAI estimation accuracy of the developed algorithm was assessed in an agriculture region with maize as the dominated crop type. The radiative transfer model was firstly used to simulate the physical relationship between canopy reflectance and LAI under different soil and vegetation conditions, and then the training sample dataset was formed. Then, neural networks (NNs) were used to develop the LAI estimation algorithm using the training sample dataset. Green, red and near-infrared band reflectances of GF-1 WFV data were used as the input variables of the NNs, as well as the corresponding LAI was the output variable. The validation results using field LAI measurements in the agriculture region indicated that the LAI estimation algorithm could achieve satisfactory results (such as R 2 = 0.818, RMSE = 0.50). In addition, the developed LAI estimation algorithm had potential to operationally generate LAI datasets using GF-1 WFV land surface reflectance data, which could provide high spatial and temporal resolution LAI data for agriculture, ecosystem and environmental management researches.
机译:叶面积指数(LAI)是表征叶片密度和冠层结构的重要植被参数,在全球变化研究,地表过程模拟和农业监测中起着重要作用。中国GF-1卫星上的宽视场(WFV)传感器可以获取具有十足的空间分辨率,高时间分辨率和宽覆盖范围的多光谱数据,这对于动态监测LAI具有重要的数据来源。因此,基于辐射传递模型,开发了一种用于GF-1 WFV数据的自动LAI估计算法,并在以玉米为主要农作物类型的农业地区评估了该算法的LAI估计精度。首先利用辐射传输模型模拟了不同土壤和植被条件下冠层反射率与LAI之间的物理关系,然后形成了训练样本数据集。然后,使用训练样本数据集,使用神经网络(NNs)来开发LAI估计算法。 GF-1 WFV数据的绿色,红色和近红外波段反射率用作NN的输入变量,相应的LAI用作输出变量。在农业地区使用现场LAI测量的验证结果表明,LAI估计算法可以获得令人满意的结果(例如R 2 = 0.818,RMSE = 0.50)。此外,开发的LAI估计算法具有使用GF-1 WFV地表反射率数据在业务上产生LAI数据集的潜力,这可以为农业,生态系统和环境管理研究提供高时空分辨率的LAI数据。

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