Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)

Bayesian approach to classify SLSTR pixels over polar regions in clear ocean, clouds and sea-ice is presented. The approach is based on Look-Up-Tables estimating the probability distribution function (PDF) for a pixel, given a set of measured values for selected variables. PDF’s have been generated...

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Main Authors: Fabio Del Frate, Matteo Picchiani, Massimiliano Sist, Gianluigi Liberti, Rosalia Santoleri, Anne O'Carroll
Other Authors: DEL FRATE, F, Picchiani, M, Sist, M, Liberti, G, Santoleri, R, O'Carroll, A
Format: Conference Object
Language:English
Published: 2017
Subjects:
Online Access:https://hdl.handle.net/2108/200302
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author Fabio Del Frate
Matteo Picchiani
Massimiliano Sist
Gianluigi Liberti
Rosalia Santoleri
Anne O'Carroll
author2 DEL FRATE, F
Picchiani, M
Sist, M
Liberti, G
Santoleri, R
O'Carroll, A
author_facet Fabio Del Frate
Matteo Picchiani
Massimiliano Sist
Gianluigi Liberti
Rosalia Santoleri
Anne O'Carroll
author_sort Fabio Del Frate
collection Universitá degli Studi di Roma "Tor Vergata": ART - Archivio Istituzionale della Ricerca
description Bayesian approach to classify SLSTR pixels over polar regions in clear ocean, clouds and sea-ice is presented. The approach is based on Look-Up-Tables estimating the probability distribution function (PDF) for a pixel, given a set of measured values for selected variables. PDF’s have been generated by analysing archived MODIS AQUA and TERRA products. MODIS data have been selected because of the long available time series, the quality of cloud mask products and possibility to simulate the SLSTR observation including the dual view capability. A first set of candidate input variables in the PDF’s, defined based on review relevant literature, has been optimized both in terms of classification skills and computational efficiency. Different combinations of variables have been considered together with ancillary data SST and observation geometry to get the final set of variables to be used for classification. The optimization process based on: visual analysis, quantitative comparison against SAR ice concentration products is presented. The method has been applied to SLTR L1 data showing improvement respect to the current operational method of cloud classification. In addition, classification of pixels covered by sea ices is provided which consequently improves the SST final product.
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genre_facet Sea ice
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spelling ftunivromatorver:oai:art.torvergata.it:2108/200302 2025-05-11T14:25:28+00:00 Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR) Fabio Del Frate Matteo Picchiani Massimiliano Sist Gianluigi Liberti Rosalia Santoleri Anne O'Carroll DEL FRATE, F Picchiani, M Sist, M Liberti, G Santoleri, R O'Carroll, A 2017 https://hdl.handle.net/2108/200302 eng eng ispartofbook:Proceedings for the 2017 EUMETSAT Meteorological Satellite Conference EUMETSAT Meteorological Satellite Conference https://hdl.handle.net/2108/200302 info:eu-repo/semantics/restrictedAccess Settore ING-INF/02 - CAMPI ELETTROMAGNETICI Settore IINF-02/A - Campi elettromagnetici info:eu-repo/semantics/conferenceObject 2017 ftunivromatorver 2025-04-15T04:42:34Z Bayesian approach to classify SLSTR pixels over polar regions in clear ocean, clouds and sea-ice is presented. The approach is based on Look-Up-Tables estimating the probability distribution function (PDF) for a pixel, given a set of measured values for selected variables. PDF’s have been generated by analysing archived MODIS AQUA and TERRA products. MODIS data have been selected because of the long available time series, the quality of cloud mask products and possibility to simulate the SLSTR observation including the dual view capability. A first set of candidate input variables in the PDF’s, defined based on review relevant literature, has been optimized both in terms of classification skills and computational efficiency. Different combinations of variables have been considered together with ancillary data SST and observation geometry to get the final set of variables to be used for classification. The optimization process based on: visual analysis, quantitative comparison against SAR ice concentration products is presented. The method has been applied to SLTR L1 data showing improvement respect to the current operational method of cloud classification. In addition, classification of pixels covered by sea ices is provided which consequently improves the SST final product. Conference Object Sea ice Universitá degli Studi di Roma "Tor Vergata": ART - Archivio Istituzionale della Ricerca
spellingShingle Settore ING-INF/02 - CAMPI ELETTROMAGNETICI
Settore IINF-02/A - Campi elettromagnetici
Fabio Del Frate
Matteo Picchiani
Massimiliano Sist
Gianluigi Liberti
Rosalia Santoleri
Anne O'Carroll
Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title_full Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title_fullStr Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title_full_unstemmed Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title_short Sea-ice cloud screening for Copernicus sentinel-3 sea and land surface temperature radiometer (SLSTR)
title_sort sea-ice cloud screening for copernicus sentinel-3 sea and land surface temperature radiometer (slstr)
topic Settore ING-INF/02 - CAMPI ELETTROMAGNETICI
Settore IINF-02/A - Campi elettromagnetici
topic_facet Settore ING-INF/02 - CAMPI ELETTROMAGNETICI
Settore IINF-02/A - Campi elettromagnetici
url https://hdl.handle.net/2108/200302