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The PyCoxMunk python library allows users to calculate the expected sea surface reflectance under a given set of geometric and meteorological conditions. It is designed for use in satellite remote sensing and supports the majority of common satellite platforms. This archive contains data related to the example notebooks distributed with PyCoxMunk. Here you can find: 1) An input dataset for the SLSTR example notebook. 2) Output files for the SLSTR, SEVIRI and GOES example notebooks.
earth observation; remote sensing; sea surface; radiative transfer
earth observation; remote sensing; sea surface; radiative transfer
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