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Improving the Accuracies of Bathymetric Models Based on Multiple Regression for Calibration (Case Study: Sarca River, Italy)

机译:基于多重回归进行校正的测深模型的精度提高(案例研究:意大利萨卡河)

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The optical imagery has the potential for extraction of spatially and temporally explicit bathymetric information in inland/coastal waters. Lyzenga's model and optimal band ratio analysis (OBRA) are main bathymetric models which both provide linear relations with water depths. The former model is sensitive and the latter is quite robust to substrate variability. The simple regression is the widely used approach for calibration of bathymetric models either Lyzenga's model or OBRA model. In this research, a multiple regression is examined for empirical calibration of the models in order to take the advantage of all spectral channels of the imagery. This method is applied on both Lyzenga's model and OBRA model for the bathymetry of a shallow Alpine river in Italy, using WorldView-2 (WV-2) and GeoEye images. In-situ depths are recorded using RTK GPS in two reaches. One-half of the data is used for calibration of models and the remaining half as independent check-points for accuracy assessment. In addition, radiative transfer model is used to simulate a set of spectra in a range of depths, substrate types, and water column properties. The simulated spectra are convolved to the sensors' spectral bands for further bathymetric analysis. Investigating the simulated spectra, it is concluded that the multiple regression improves the robustness of the Lyzenga's model with respect to the substrate variability. The improvements of multiple regression approach are much more pronounced for the Lyzenga's model rather than the OBRA model. This is in line with findings from real imagery; for instance, the multiple regression applied for calibration of Lyzenga's and OBRA models demonstrated, respectively, 22% and 9% higher determination coefficients (R~2) as well as 3 cm and 1 cm better RMSEs compared to the simple regression using the WV-2 image.
机译:光学图像具有提取内陆/沿海水域中时空明确的测深信息的潜力。 Lyzenga模型和最佳谱带比分析(OBRA)是主要的测深模型,它们均提供与水深的线性关系。前者模型很敏感,而后者对底物变异性却很健壮。简单回归是广泛应用的用于对水深模型(Lyzenga模型或OBRA模型)进行校准的方法。在这项研究中,为了对模型进行经验校准,对多元回归进行了检验,以便利用图像的所有光谱通道。使用WorldView-2(WV-2)和GeoEye图像,该方法适用于Lyzenga模型和OBRA模型,用于意大利浅高山河流的测深。使用RTK GPS在两个范围内记录现场深度。数据的一半用于模型校准,其余的一半用作准确性评估的独立检查点。此外,辐射转移模型用于模拟一系列深度,基材类型和水柱特性范围内的光谱。模拟光谱被卷积到传感器的光谱带中,以进行进一步的测深分析。研究模拟光谱,得出的结论是,多元回归提高了Lyzenga模型相对于底物变异性的稳健性。对于Lyzenga模型而不是OBRA模型,多元回归方法的改进更为明显。这与真实图像的发现相符;例如,应用于Lyzenga和OBRA模型校准的多元回归分别表明,与使用WV-的简单回归相比,测定系数(R〜2)高22%和9%,RMSE分别提高3 cm和1 cm。 2张图片。

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