Affiliation:
1. NASA Goddard Space Flight Center
2. University of Maryland Baltimore County
3. Science Applications International Corporation
4. Go2Q Pty Ltd.
5. Science Systems and Applications, Inc.
Abstract
Ocean color (OC) 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
(
R
r
s
(
λ
)
;
s
r
−
1
) 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 OC 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 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
R
r
s
(
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 for ocean color (AERONET-OC) datasets. The OE
algorithm improved
R
r
s
(
λ
)
estimates relative to the NASA
standard operational algorithm by improving all statistical metrics at
443, 555, and 667 nm. Unphysical negative
R
r
s
(
λ
)
, which often appears in complex
water conditions, was reduced by a factor of 3. The OE-derived
pixel-level
R
r
s
(
λ
)
uncertainty estimates were also
assessed relative to in-situ data and were shown to have skill.
Funder
National Aeronautics and Space
Administration
Subject
Atomic and Molecular Physics, and Optics,Engineering (miscellaneous),Electrical and Electronic Engineering
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献