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Experimental Sentinel-2 LAI estimation using parametric, non-parametric and physical retrieval methods - A comparison

机译:使用参数,非参数和物理检索方法进行实验性Sentinel-2 LAI估计-比较

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Given the forthcoming availability of Sentinel-2 (52) images, this paper provides a systematic comparison of retrieval accuracy and processing speed of a multitude of parametric, non-parametric and physically-based retrieval methods using simulated S2 data. An experimental field dataset (SPARC), collected at the agricultural site of Barrax (Spain), was used to evaluate different retrieval methods on their ability to estimate leaf area index (LAI). With regard to parametric methods, all possible band combinations for several two-band and three-band index formulations and a linear regression fitting function have been evaluated. From a set of over ten thousand indices evaluated, the best performing one was an optimized three-band combination according to (rho(560)-rho(1610)-rho(2190))/(rho(560)+rho(1610)+rho(2190)) with a 10-fold cross-validation R-CV(2) of 0.82 (RMSECV: 0.62). This family of methods excel for their fast processing speed, e.g., 0.05 s to calibrate and validate the regression function, and 3.8 s to map a simulated S2 image. With regard to non-parametric methods, 11 machine learning regression algorithms (MLRAs) have been evaluated. This methodological family has the advantage of making use of the full optical spectrum as well as flexible, nonlinear fitting. Particularly kernel-based MLRAs lead to excellent results, with variational heteroscedastic (VH) Gaussian Processes regression (GPR) as the best performing method, with a R-CV(2) of 0.90 (RMSECV: 0.44). Additionally, the model is trained and validated relatively fast (1.70 s) and the processed image (taking 73.88 s) includes associated uncertainty estimates. More challenging is the inversion of a PROSAIL based radiative transfer model (RTM). After the generation of a look-up table (LUT), a multitude of cost functions and regularization options were evaluated. The best performing cost function is Pearson's chi-square. It led to a R-2 of 0.74 (RMSE: 0.80) against the validation dataset. While its validation went fast (0.33 s), due to a per-pixel LUT solving using a cost function, image processing took considerably more time (01:01:47). Summarizing, when it comes to accurate and sufficiently fast processing of imagery to generate vegetation attributes, this paper concludes that the family of kernel-based MLRAs (e.g. GPR) is the most promising processing approach. (C) 2015 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:给定即将发布的Sentinel-2(52)图像,本文提供了使用模拟S2数据对多种参数,非参数和基于物理的检索方法的检索准确性和处理速度进行系统比较的结果。在巴拉克斯(西班牙)的农业现场收集的实验田间数据集(SPARC)用于评估不同的检索方法对叶面积指数(LAI)的估计能力。关于参数方法,已经评估了几种两波段和三波段指数公式的所有可能波段组合以及线性回归拟合函数。从一组评估的上万个索引中,表现最好的是根据(rho(560)-rho(1610)-rho(2190))/(rho(560)+ rho(1610)的优化三频段组合+ rho(2190))的10倍交叉验证R-CV(2)为0.82(RMSECV:0.62)。该方法系列的快速处理速度非常出色,例如0.05秒用于校准和验证回归函数,而3.8秒用于绘制模拟的S2图像。关于非参数方法,已经评估了11种机器学习回归算法(MLRA)。该方法族的优点是可以利用完整的光谱以及灵活的非线性拟合。尤其是基于内核的MLRA会产生出色的结果,其中变分异方差(VH)高斯过程回归(GPR)是性能最好的方法,R-CV(2)为0.90(RMSECV:0.44)。此外,该模型的训练和验证相对较快(1.70 s),并且处理后的图像(耗时73.88 s)包括相关的不确定性估计。更具挑战性的是基于PROSAIL的辐射传递模型(RTM)的反演。在生成查找表(LUT)之后,评估了多种成本函数和正则化选项。表现最佳的成本函数是Pearson的卡方。相对于验证数据集,R-2为0.74(RMSE:0.80)。尽管它的验证进行得很快(0.33 s),但是由于使用成本函数对每像素LUT进行求解,因此图像处理花费了更多的时间(01:01:47)。总而言之,当涉及到对图像进行精确且足够快速的处理以生成植被属性时,本文得出结论,基于核的MLRA(例如GPR)家族是最有前途的处理方法。 (C)2015国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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