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Lake water quality classification with airborne hyperspectral spectrometer and simulated MERIS data

机译:机载高光谱仪和模拟MERIS数据对湖泊水质进行分类

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摘要

We study the use of airborne and simulated satellite remote sensing data for classification of three water quality variables: Secchi depth, turbidity, and chlorophyll a. An extensive airborne spectrometer and ground truth data set obtained in four lake water quality measurement campaigns in southern Finland during 19961998 was used in the analysis. The class limits for the water quality variables were obtained from two operational classification standards. When remote sensing data is used, a combination of them proved to be the most suitable. The feasibility of the system for operational use was tested by training and testing the retrieval algorithms with separate data sets. In this case, the classification accuracy is 90% for three Secchi depth classes, 79% for five turbidity classes, and 78% for five chlorophyll a classes. When Airborne Imaging Spectrometer for Applications (AISA) data was spectrally averaged corresponding to Envisat Medium Resolution Imaging Spectrometer (MERIS) channels, the classification accuracy was about the same as in the case of the original AISA channels.
机译:我们研究了使用机载和模拟卫星遥感数据对三个水质变量进行分类的方法:Secchi深度,浊度和叶绿素a。分析中使用了广泛的机载光谱仪和地面实况数据集,这些数据集是在19961998年芬兰南部的四个湖泊水质测量活动中获得的。从两个操作分类标准中获得水质变量的分类限值。当使用遥感数据时,事实证明它们的组合是最合适的。通过训练和测试具有单独数据集的检索算法,测试了该系统可用于运营的可行性。在这种情况下,三个Secchi深度分类的分类精度为90%,五个浊度分类为79%,五个叶绿素a分类为78%。当将机载成像光谱仪(AISA)数据对应于Envisat中分辨率成像光谱仪(MERIS)通道进行光谱平均时,分类精度与原始AISA通道的情况大致相同。

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