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A physically based approach in retrieving vegetation Leaf Area Index from Landsat surface reflectance data

机译:从Landsat表面反射率数据中检索植被叶面积指数的物理方法

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In this study, we aim to generate global 30-m Leaf Area Index (LAI) from Landsat surface reflectance data using the radiative transfer theory of canopy spectral invariants which facilitates parameterization of the canopy spectral bidirectional reflectance factor (BRF). Furthermore, canopy spectral invariants introduce an efficient way for incorporating multiple bands for retrieving LAI. We incorporate a 3-band retrieval scheme including the Red, NIR and SWIR bands, the SWIR band being specifically useful in low LAI regions and thus compensating for background effects. The initial results have satisfactory agreement with MODIS LAI, although with spatially more detailed structure and variability. A future exercise will be to introduce field measured LAI estimates to minimize the differences between model-simulated LAI's and in-situ observations.
机译:在这项研究中,我们的目标是使用冠层光谱不变量的辐射传递理论从Landsat表面反射率数据生成全球30米的叶面积指数(LAI),这有助于对冠层光谱双向反射率(BRF)进行参数化。此外,冠层光谱不变性引入了一种有效的方法,用于合并多个频带以检索LAI。我们结合了包括Red,NIR和SWIR波段在内的3波段检索方案,SWIR波段在低LAI区域特别有用,因此可以补偿背景效应​​。初步结果与MODIS LAI令人满意,尽管空间上更详细的结构和可变性不同。未来的工作将是引入实地测得的LAI估计值,以最大程度地减少模型模拟的LAI与现场观测值之间的差异。

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