Surveys in Geophysics

, Volume 40, Issue 3, pp 333–360 | Cite as

Retrieval of Atmospheric Parameters and Surface Reflectance from Visible and Shortwave Infrared Imaging Spectroscopy Data

  • David R. ThompsonEmail author
  • Luis Guanter
  • Alexander Berk
  • Bo-Cai Gao
  • Rudolf Richter
  • Daniel Schläpfer
  • Kurtis J. Thome


Remote imaging spectroscopy in the 0.4–2.5-μm visible and shortwave infrared (VSWIR) range captures the majority of solar-reflected energy and enables a wide range of earth surface studies. This spectral range is also influenced by atmospheric effects including absorption from atmospheric gases and aerosols, Rayleigh scattering, and particle scattering. Globally consistent surface measurements must compensate for these atmospheric effects. This article reviews the physical and mathematical foundations of modern VSWIR atmospheric retrieval, focusing on imaging spectrometers. We assess sensitivity of the retrieval to errors in atmospheric state estimation. Finally, we describe some promising avenues of future research to support the next generation of orbital imaging spectrometers.


Imaging spectroscopy Atmospheric correction Hyperspectral imaging Surface reflectance 



We acknowledge the critical support and facilitation of the International Space Science Institute (ISSI), Bern, Switzerland. A portion of this research was performed at the Jet Propulsion Laboratory, California Institute of Technology. AVIRIS-C and AVIRIS-NG are supported by National Aeronautics and Space Administration Earth Science, Science Mission Directorate. U.S. Federal Government support acknowledged. Copyright 2018. All Rights Reserved.


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Copyright information

© Springer Nature B.V. 2018

Authors and Affiliations

  1. 1.Jet Propulsion LaboratoryCalifornia Institute of TechnologyPasadenaUSA
  2. 2.GFZ German Research Centre for Geosciences, Helmholtz Centre PotsdamPotsdamGermany
  3. 3.Spectral Sciences, Inc.BurlingtonUSA
  4. 4.Naval Research LaboratoryWashingtonUSA
  5. 5.German Aerospace Center (DLR)WeßlingGermany
  6. 6.ReSe Applications LLCWilSwitzerland
  7. 7.NASA/Goddard Space Flight CenterGreenbeltUSA

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