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Retrieval of oceanic suspended sediment concentration with support vector regression

机译:支持向量回归技术反演海洋悬浮物浓度

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摘要

The aim of this study is to examine the feasibility of Support vector regression (SVR) in retrieval of suspended sediment concentration by comparing it with band ratio regression models. First, the remote sensing reflectance and the suspended sediment concentrations were measured in field and in laboratory. The in situ dataset and laboratory dataset were used in t developing retrieval models based on support vector regression and band ratio regression. Second, we select band ratio regression model with high R-square value and low Root Mean Squared Error as the best band ratio regression model. Finally, the best band ratio regression model was compared with SVR model in different datasets by leave-one-out cross validation. The experimental results demonstrate that the prediction accuracy of support vector regression outperforms the band ratio regression models based on the mean absolute error in general. SVR using all bands yielded slightly superior results than using TM1 and TM4 bands in terms of accuracy. The findings suggest that the SVR model is available using all bands data. The support vector regression can be applied in retrieval of suspended sediment concentration without selecting bands and constructing band ratio expression. SVR is a promising alternative to suspended sediment retrieval models.
机译:这项研究的目的是通过与带比率回归模型进行比较,研究支持向量回归(SVR)在获取悬浮泥沙浓度中的可行性。首先,在野外和实验室中测量遥感反射率和悬浮的泥沙浓度。基于支持向量回归和带比率回归,将原位数据集和实验室数据集用于开发检索模型。其次,我们选择具有较高R平方值和较低均方根误差的带比率回归模型作为最佳带比率回归模型。最后,通过留一法交叉验证,将最佳带比回归模型与SVR模型在不同数据集中进行了比较。实验结果表明,通常基于平均绝对误差,支持向量回归的预测精度优于带比率回归模型。就准确度而言,使用所有频段的SVR产生的结果均比使用TM1和TM4频段略好。研究结果表明,使用所有频段数据都可以使用SVR模型。支持向量回归可以在不选择谱带和构造谱带比表达的情况下,用于悬浮泥沙浓度的取回。 SVR是悬浮沉积物取回模型的有前途的替代方法。

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