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First 3251 results for ” A Sterl (Contrib. Author)”

  1. The Benefit of HH and VH Polarizations in Retrieving Extreme Wind Speeds for an ASCAT-Type Scatterometer

    The wind retrieval performance of a fixed fan-beam scatterometer operating at C-band in VV polari...

    M Belmonte-Rivas, A Stoffelen, GJ van Zadelhoff | Status: published | Journal: IEEE Gosci. Remote Sensing Letters | Volume: 52 | Year: 2014 | First page: 4273 | Last page: 4280 | doi: 10.1109/TGRS.2013.2280876

    Publication

  2. BAYESIAN SEA ICE DETECTION WITH ASCAT

    A sea ice model for the Advanced Scatterometer (ASCAT) onboard Metop-A satellite has been develop...

    JA Verspeek, M Belmonte-Rivas, A Stoffelen, A Verhoef, J Vogelzang | Conference: ESA Living Planet Symposium | Organisation: ESA | Year: 2010 | First page: 0 | Last page: 0

    Publication

  3. Analysis of the SMOS ocean salinity inversion algorithm

    As part of the preparation for the European Space Agency SMOS (Soil Moisture and Ocean Salinity) ...

    C Gabarró, M Portabella, M Talone, J Font | Conference: International Geoscience and Remote Sensing Symposium (IGARSS) | Organisation: IEEE | Place: Barcelona, Spain | Year: 2007 | First page: 0 | Last page: 0

    Publication

  4. A scatterometer record of sea ice extents and backscatter: 1992–2016

    This paper presents the first long-term climate data record of sea ice extents and backscatter de...

    M Belmonte Rivas, I Otosaka, ACM Stoffelen, AH Verhoef | Status: published | Journal: The Cryosphere | Year: 2018 | First page: 2941 | Last page: 2953 | doi: 10.5194/tc-12-2941-2018

    Publication

  5. Bayesian Sea Ice Detection With the ERS Scatterometer and Sea Ice Backscatter Model at C-Band

    This paper describes the adaptation of a Bayesian sea ice detection algorithm for the scatteromet...

    Inès Otosaka, Maria Belmonte Rivas, Ad Stoffelen | Journal: IEEE Transactions on Geoscience and Remote Sensing | Volume: 56 | Year: 2018 | doi: https://doi.org/10.1109/TGRS.2017.2777670

    Publication