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The MASCS instrument was an essential part of the NASA MESSENGER mission that orbited the planet Mercury between 2011 and 2015.The Visible-Infrared Spectrograph (VIRS) channels cover the visible (3001050 nm) and near-infrared (8501450 nm) ranges.We recomputed MASCS geometries using the NAIF SPICE toolkit's Python implementation spiceypy.While the MASCS PDS calibrated data records (CDR) contained some geometrical information, certain key parameters (such as local time) were missing.Local time serves as a useful proxy for surface temperature due to Mercury's slow rotation.A detailed digital elevation model (DTM) of the entire planet was not available, so Mercury shape was approximated as an ellipsoid.We updated this approximation with the DTM from MESSENGER/Mercury Laser Altimeter (MLA).We also included the calculation of each measurement normal direction, projected on the surface and it's angle with the local north direction. (Fig.1)lLeveraging the updated measurements, we developed a machine learning method to automatically select similar observations for photometric correction.Fig.1We extracted MDIS mosaic and DTM pixel data under each individual MASCS field of view (FOV) as proxies for geomorphological units and sub-pixel roughness.To cluster similar observations, we applied HDBSCAN, an algorithm that extends DBSCAN by creating a hierarchical clustering structure and extracting a flat clustering based on cluster stability. (fig.2)fig.2
Mario D’Amore (Wed,) studied this question.