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Optimal Estimation Framework for Ocean Color Atmospheric Correction and Pixel-level Uncertainty QuantificationOcean color remote sensing requires compensation for atmospheric scattering and absorption (aerosol, Rayleigh, and trace gases), referred to as atmospheric correction (AC). AC allows inference of parameters such as spectrally resolved remote sensing reflectance (Rrs)(λ); sr1) at the ocean surface from the top-of-atmosphere reflectance. Often, the uncertainty of this process is not fully explored. Bayesian inference techniques provide a simultaneous AC and uncertainty assessment via a full posterior distribution of the relevant variables, given the prior distribution of those variables and the radiative transfer (RT) likelihood function. Given uncertainties in the algorithm inputs, the Bayesian framework enables better constraints on the AC process by using the complete spectral information compared to traditional approaches that use only a subset of bands for AC. This paper investigates a Bayesian inference research method (Optimal Estimation, OE) for ocean color AC by simultaneously retrieving atmospheric and ocean properties using all visible and near-infrared spectral bands. The OE algorithm analytically approximates the posterior distribution of parameters based on normality assumptions and provides a potentially viable operational algorithm with a reduced computational expense. We developed a Neural Network (NN) RT forward model look-up-table-based emulator to increase algorithm efficiency further and thus speed up the likelihood computations. We then applied the OE algorithm to synthetic data and observations from the MODerate resolution Imaging Spectroradiometer (MODIS) on NASA’s Aqua spacecraft. We compared the Rrs)(λ) retrieval and its uncertainty estimates from the OE method with in-situ validation data from the SeaWiFS Bio-optical Archive and Storage System (SeaBASS) and Aerosol Robotic Network Ocean Color (AERONET-OC) datasets. The OE algorithm improved Rrs)(λ) estimates relative to the NASA standard operational algorithm by improving all statistical metrics at 443, 555, and 667 nm. Unphysical negative Rrs)(λ), which often appear in complex water conditions, was reduced by a factor of 3. The OE-derived pixel-level Rrs)(λ) uncertainty estimates were also assessed relative to in-situ data and were shown to have skill.
Document ID
20220012607
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Amir Ibrahim
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Bryan A. Franz
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Andrew M. Sayer
(University of Maryland, Baltimore County Baltimore, Maryland, United States)
Kirk Knobelspiesse
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Minwei Zhang
(Science Applications International Corporation (United States) McLean, Virginia, United States)
Sean Bailey
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Lachlan McKinna
(Science Collaborator)
Meng Gao
(Science Systems and Applications (United States) Lanham, Maryland, United States)
P. Jeremy Werdell
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Date Acquired
August 15, 2022
Publication Date
July 21, 2022
Publication Information
Publication: Applied Optics
Publisher: Optica Publishing Group
Volume: 61
Issue: 22
Subject Category
Earth Resources and Remote Sensing
Funding Number(s)
WBS: 564349.04.01.01
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
Keywords
Atmospheric correction
Ocean Color
Bayesian
Machine learning
Uncertainties
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