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Estimation of forest leaf area index from SPOT imagery using NDVI distribution over forest stands

机译:利用NDVI分布于林分的SPOT影像估算森林叶面积指数。

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Leaf area index (LAI) is a key parameter of atmosphere-vegetation exchanges, affecting the net ecosystem exchange and the productivity. At regional or continental scales, LAI can be estimated by remotely-sensed spectral vegetation indices (SVI). Nevertheless, relationships between LAI and SVI show saturation for LAI values greater than 3-5. This is one of the principal limitations of remote sensing of LAI in forest canopies. In this article, a new approach is developed to determine LAI from the spatial variability of radiometric data. To test this method, in situ measurements for LAI of 40 stands, with three dominant species (European beech, oak and Scots pine) were available over 5 years in the Fontainebleau forest near Paris. If all years and all species are pooled, a good linear relationship without saturation is founded between average stand LAI measurements and a model combining the logarithm of the standard deviation and the skewness of the normalized difference vegetation index (NDVI) (R~2 = 0.73 rmse = 1.08). We demonstrate that this relation can be slightly improved by using different linear models for each year and each species (R~2 = 0.82 rmse = 0.86), but the standard deviation is less sensitive to the species and the year effects than the mean NDVI and is therefore a performing index.
机译:叶面积指数(LAI)是大气-植被交换的关键参数,影响净生态系统交换和生产力。在区域或大陆范围内,LAI可以通过遥感光谱植被指数(SVI)进行估算。然而,对于大于3-5的LAI值,LAI和SVI之间的关系显示出饱和。这是在林冠层中对LAI进行遥感的主要限制之一。在本文中,开发了一种新方法来根据放射线数据的空间变异性确定LAI。为了测试该方法,可以在巴黎附近的枫丹白露森林中对40个林分的LAI进行原位测量,其中包括三种主要树种(欧洲山毛榉,橡树和苏格兰松树)。如果汇总所有年份和所有物种,则平均林分LAI测量值与模型之间的关系就建立了良好的线性关系,而没有饱和,该模型结合了标准偏差的对数和归一化植被指数(NDVI)的偏度(R〜2 = 0.73) rmse = 1.08)。我们证明,通过使用每年和每个物种不同的线性模型(R〜2 = 0.82 rmse = 0.86)可以稍微改善这种关系,但是标准偏差对物种和年份的影响不如平均NDVI和因此是绩效指标。

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