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Hyperspectral dimensionality reduction for biophysical variable statistical retrieval

机译:高光谱降维用于生物物理变量统计检索

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Current and upcoming airborne and spaceborne imaging spectrometers lead to vast hyperspectral data streams. This scenario calls for automated and optimized spectral dimensionality reduction techniques to enable fast and efficient hyperspectral data processing, such as inferring vegetation properties. In preparation of next generation biophysical variable retrieval methods applicable to hyperspectral data, we present the evaluation of 11 dimensionality reduction (DR) methods in combination with advanced machine learning regression algorithms (MLRAs) for statistical variable retrieval. Two unique hyperspectral datasets were analyzed on the predictive power of DR + MLRA methods to retrieve leaf area index (LAI): (1) a simulated PROSAIL reflectance data (2101 bands), and (2) a field dataset from airborne HyMap data (125 bands). For the majority of MLRAs, applying first a DR method leads to superior retrieval accuracies and substantial gains in processing speed as opposed to using all bands into the regression algorithm. This was especially noticeable for the PROSAIL dataset: in the most extreme case, using the classical linear regression (LR), validation results R-CV(2) (RMSECV) improved from 0.06 (12.23) without a DR method to 0.93 (0.53) when combining it with a best performing DR method (i.e., CCA or OPLS). However, these DR methods no longer excelled when applied to noisy or real sensor data such as HyMap. Then the combination of kernel CCA (KCCA) with LR, or a classical PCA and PLS with a MLRA showed more robust performances (R-CV(2) of 0.93). Gaussian processes regression (GPR) uncertainty estimates revealed that LAI maps as trained in combination with a DR method can lead to lower uncertainties, as opposed to using all HyMap bands. The obtained results demonstrated that, in general, biophysical variable retrieval from hyperspectral data can largely benefit from dimensionality reduction in both accuracy and computational efficiency. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:当前和即将出现的机载和星载成像光谱仪会导致大量的高光谱数据流。这种情况需要自动化和优化的光谱降维技术,以实现快速高效的高光谱数据处理,例如推断植被特性。在准备适用于高光谱数据的下一代生物物理变量检索方法时,我们将结合高级机器学习回归算法(MLRA)评估11维降阶(DR)方法,以进行统计变量检索。分析了两个独特的高光谱数据集的DR + MLRA方法的预测能力,以检索叶面积指数(LAI):( 1)模拟的PROSAIL反射率数据(2101个波段),和(2)来自机载HyMap数据的现场数据集(125个)乐队)。对于大多数MLRA,与在回归算法中使用所有波段相反,首先应用DR方法会导致更高的检索准确性并显着提高处理速度。这对于PROSAIL数据集尤其明显:在最极端的情况下,使用经典线性回归(LR),验证结果R-CV(2)(RMSECV)从无DR方法的0.06(12.23)提高到0.93(0.53)将其与性能最佳的DR方法(即CCA或OPLS)结合使用时。但是,将这些DR方法应用于嘈杂或真实的传感器数据(例如HyMap)后,其性能不再出色。然后,内核CCA(KCCA)与LR或经典PCA和PLS与MLRA的组合显示出更强大的性能(R-CV(2)为0.93)。高斯过程回归(GPR)不确定性估计显示,与使用所有HyMap频段相比,结合DR方法训练的LAI映射可以降低不确定性。获得的结果表明,一般而言,从高光谱数据中检索生物物理变量可以极大地受益于精度和计算效率的降维。 (C)2017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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