2021
DOI: 10.5194/amt-14-4083-2021
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Efficient multi-angle polarimetric inversion of aerosols and ocean color powered by a deep neural network forward model

Abstract: Abstract. NASA's Plankton, Aerosol, Cloud, ocean Ecosystem (PACE) mission, scheduled for launch in the timeframe of 2023, will carry a hyperspectral scanning radiometer named the Ocean Color Instrument (OCI) and two multi-angle polarimeters (MAPs): the UMBC Hyper-Angular Rainbow Polarimeter (HARP2) and the SRON Spectro-Polarimeter for Planetary EXploration one (SPEXone). The MAP measurements contain rich information on the microphysical properties of aerosols and hydrosols and therefore can be used to retrieve… Show more

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Cited by 44 publications
(83 citation statements)
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“…These future missions will allow for improved characterization of phytoplankton community composition and better estimates of particle size distributions. In particular, polarization may allow for improved partitioning of organic matter versus inorganic matter using the real part of the refractive index and the degree of linear polarization of water leaving radiances (Gao et al, 2021;Loisel et al, 2008;Stamnes et al, 2018;Tonizzo et al, 2009). These planned developments have the potential to further our understanding of water clarity in the Chesapeake Bay using satellite remote sensing.…”
Section: Directions For Future Workmentioning
confidence: 99%
“…These future missions will allow for improved characterization of phytoplankton community composition and better estimates of particle size distributions. In particular, polarization may allow for improved partitioning of organic matter versus inorganic matter using the real part of the refractive index and the degree of linear polarization of water leaving radiances (Gao et al, 2021;Loisel et al, 2008;Stamnes et al, 2018;Tonizzo et al, 2009). These planned developments have the potential to further our understanding of water clarity in the Chesapeake Bay using satellite remote sensing.…”
Section: Directions For Future Workmentioning
confidence: 99%
“…Accurate estimation of the water-leaving signal requires the quantification and removal of the aerosol path radiance and the ocean surface reflectance from the remote sensing measurement (Mobley et al, 2016). To advance both aerosol and ocean color characterization based on MAP measurements, simultaneous multi-parameter retrieval algorithms have been developed over both open and coastal waters (Chowdhary et al, 2005;Hasekamp et al, 2011;Xu et al, 2016;Stamnes et al, 2018;Gao et al, 2018;Fan et al, 2019;Gao et al, 2019Gao et al, , 2021.…”
Section: Introductionmentioning
confidence: 99%
“…Neural networks that are used to emulate the forward model and are applied in conjunction with a Bayesian approach to solve the inverse problem [9][10][11][12]; 2.…”
Section: Introductionmentioning
confidence: 99%
“…For a data model with input and output noise, the computation of the estimate ω is not a trivial task, because the covariance matrix C δ y (z, ω), which enters in the expression of E D (ω), depends on ω. Moreover, in Equation (11), C δ y (z, ω) corresponds to a linearization of the neural network function under the assumption that the noise process in the input space is small. This problem can be solved by implicitly learning the covariance matrix C δ y (z, ω) from the loss function [29].…”
mentioning
confidence: 99%
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