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A novel approach for bathymetry of shallow rivers based on spectral magnitude and shape predictors using stepwise regression

机译:基于光谱大小和形状预测器的逐步回归的浅河测深新方法

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Spatial heterogeneities of substrate type, water-surface roughness and also inherent optical properties (IOPs) of the water column can pose substantial challenges to optical remote sensing of fluvial bathymetry. Development of robust techniques with respect to the optical complexities of riverine environments is then central to produce accurate bathymetry maps over large spatial extents. The empirical (regression-based) techniques (e.g., Lyzenga's model) have widely been applied for estimation of bathymetry from optical imagery in inland/coastal waters. The models in the literature are built upon only magnitude-related predictors derived from spectral radiances/reflectances at different bands. However, optically complicating factors such as variations in bottom type and water column constituents can change not only the magnitude but also the shape of water-leaving spectra. This research incorporates spectral derivatives as shape-related predictors in order to enhance the description of spectra through the regression-based depth retrieval. A stepwise regression is utilized to select the optimal predictors among all the possible Lyzenga (i.e., magnitude-related) and derivative (i.e., shape-related) predictors. Radiative transfer simulations are used to examine the bathymetry models in optically-complex shallow rivers by considering variable bottom-types and IOPs. The methods are also applied to a WorldView-3 image of the Sarca River located in Italian Alps and resultant bathymetry estimates are assessed using in-situ measurements. The results indicate the effectiveness of spectral derivatives in improving the accuracies of depth retrievals particularly for optically-complex waters.
机译:基质类型的空间异质性,水表面粗糙度以及水柱的固有光学特性(IOP)可能对河流测深的光学遥感提出重大挑战。因此,针对河流环境光学复杂性的健壮技术的开发对于在大空间范围内生成准确的测深图至关重要。经验(基于回归)技术(例如,Lyzenga模型)已广泛用于从内陆/沿海水域的光学影像估算测深。文献中的模型仅建立在与幅度相关的预测变量的基础上,这些预测变量是从不同波段的光谱辐射/反射率得出的。然而,诸如底部类型和水柱组成的变化之类的光学复杂因素不仅可以改变幅度,而且可以改变留水光谱的形状。这项研究将光谱导数纳入形状相关的预测变量中,以便通过基于回归的深度检索来增强光谱的描述。利用逐步回归来在所有可能的Lyzenga(即幅度相关)和导数(即形状相关)预测变量中选择最佳预测变量。辐射传递模拟用于通过考虑可变的底部类型和IOP来检查光学复杂浅河中的水深模型。该方法还应用于位于意大利阿尔卑斯山的萨卡河的WorldView-3影像,并使用原位测量评估了测深。结果表明,光谱导数在改善深度取回精度方面的有效性,特别是对于光学复杂水域而言。

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