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Performances of neural networks for deriving LAI estimates from existing CYCLOPES and MODIS products

机译:从现有的CYCLOPES和MODIS产品中得出LAI估计值的神经网络的性能

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This paper evaluates the performances of a neural network approach to estimate LAI from CYCLOPES and MODIS nadir normalized reflectance and LAI products. A data base was generated from these products over the BELMANIP sites during the 2001-2003 period. Data were aggregated at 3 km x 3 km, resampled at 1/16 days temporal frequency and filtered to reject outliers. VEGETATION and MODIS reflectances show very consistent values in the red, near infrared and short wave infrared bands. Neural networks were trained over part of this data base for each of the 6 MODIS biome classes to retrieve both MODIS and CYCLOPES LAI products. Results show very good performances of neural networks to estimate the original LAI products with an overall root mean square error (RMSE) around 0.5 for MODIS LAI from both MODIS and CYCLOPES normalized reflectances and a RMSE ranging between 0.12 (CYCLOPES reflectances) and 0.29 (MODIS reflectances) for CYCLOPES LAI. A drop of 15% of performance was found by training MODIS biome dependant algorithm by a single network over all the classes at the same time. More detailed analyses show that CYCLOPES and MODIS LAI values are very consistent for grasses and crops. Conversely, other biomes including shrubs, savanna, needleleaf and broadleaf forests show significant discrepancies, mainly due to differences between LAI definitions used between CYCLOPES (closer to effective LAI) and MODIS (closer to true LAI). However, products derived from the original CYCLOPES LAI products show a better agreement with both effective and true LAI ground measurements values. MODIS LAI products show more instability, partly because of the slightly shorter temporal resolution as compared to CYCLOPES. These results confirm the interest and versatility of neural networks for operational algorithms. This approach could be extended to other products or sensors, and may constitute a step forward for the fusion of data from several sensors, hence contributing to develop 'virtual constellations'. (C) 2008 Elsevier Inc. All rights reserved.
机译:本文评估了一种神经网络方法的性能,该方法可从CYCLOPES和MODIS天底归一化反射率以及LAI产品估计LAI。在2001-2003年期间,通过BELMANIP网站从这些产品生成了一个数据库。数据以3 km x 3 km进行汇总,以1/16天的时间频率重新采样并过滤以排除异常值。 VEGETATION和MODIS反射率在红色,近红外和短波红外波段显示非常一致的值。在6个MODIS生物群系类别的每个数据库中,对部分神经网络进行了训练,以检索MODIS和CYCLOPES LAI产品。结果显示神经网络的性能非常好,可以从MODIS和CYCLOPES归一化反射率以及RMSE介于0.12(CYCLOPES反射率)和0.29(MODIS)之间估计MODIS LAI的原始LAI产品的总均方根误差(RMSE)约为0.5 CYCLOPES LAI。通过单个网络同时训练所有类的MODIS生物群落相关算法,发现性能下降了15%。更详细的分析表明,草和农作物的CYCLOPES和MODIS LAI值非常一致。相反,其他生物群落,包括灌木,稀树草原,针叶林和阔叶林,表现出明显差异,这主要是由于CYCLOPES(更接近有效LAI)和MODIS(更接近真实LAI)之间使用的LAI定义不同。但是,源自原始CYCLOPES LAI产品的产品与有效和真实的LAI地面测量值均显示出更好的一致性。 MODIS LAI产品显示出更多的不稳定性,部分原因是与CYCLOPES相比,时间分辨率稍短。这些结果证实了神经网络对运算算法的兴趣和多功能性。这种方法可以扩展到其他产品或传感器,并且可以构成融合来自多个传感器的数据所迈出的一步,从而有助于开发“虚拟星座”。 (C)2008 Elsevier Inc.保留所有权利。

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