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Alternative approaches for estimating leaf area index (LAI) from remotely sensed satellite and aircraft imagery

机译:从远程感测卫星和飞机图像估算叶面积指数(LAI)的替代方法

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Plant foliage density expressed as leaf area index (LAI) is an important parameter that is widely used in many ecological, meteorological and agronomic models. LAI retrieval using optical remote sensing usually requires the collection of surface calibration values or the use of image information to invert radiative transfer models. A comparison of LAI retrieval methods was conducted that included both empirical methods requiring ground based LAI calibration measurements and image based methods using remotely sensed data and literature reported parameter values. The empirical approaches included ordinary least squares regression with the Normalized Difference Vegetation Index (NDVI) and the Gitelson green index (GI) spectral vegetation indices (SVI) and a geostatistical approach that uses ground based LAI measurements and image derived kriging parameters to predict LAI. The image based procedures included the scaled SVI approach, which uses NDVI to estimate fraction of vegetation cover, and a hybrid approach that uses a neural network and a radiative transfer model to retrieve LAI. Comparable results were obtained with the empirical SVI methods and the scaled SVI method. The geostatistical approach produced LAI patterns similar to interpolated ground-based LAI measurements. The results demonstrated that although reasonable LAI estimates are possible using optical remote sensing data without in situ calibration measurements, refinements to the analytical steps of the various approaches are warranted.
机译:植物叶子密度表示为叶面积指数(LAI)是广泛应用于许多生态,气象和农艺模型的重要参数。使用光学遥感的Lai检索通常需要集合表面校准值或使用图像信息来反转辐射传输模型。进行了LAI检索方法的比较,包括使用远程感测数据和文献报告的参数值的基于基于赖校准测量和基于图像的基于图像的实证方法。经验方法包括与归一化差异植被指数(NDVI)和GITELSON绿色指数(GI)光谱植被指数(SVI)的普通最小二乘因子(SVI)以及使用地面的LAI测量和图像导出的Kriging参数来预测LAI的地质统计方法。基于图像的程序包括缩放的SVI方法,它使用NDVI来估计植被覆盖的分数,以及使用神经网络和辐射转移模型来检索赖的混合方法。通过经验SVI方法和缩放的SVI方法获得可比较的结果。地质统计方法产生了类似于内插地面LAI测量的LAI模式。结果表明,尽管使用光学遥感数据可以使用光遥感数据,但不需要采用各种方法的分析步骤的改进。

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