Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters

Atmospheric correction of remote sensing imagery over optically complex waters is still a challenging task. Even algorithms showing a good accuracy for moderate and extremely turbid waters need to be tested when being used for eutrophic inland basins. Such a test was carried out in this study on the...

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Main Authors: Aleksandr Molkov, Sergei Fedorov, Vadim Pelevin
Format: Article
Language:English
Published: MDPI AG 2022-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/14/15/3663
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author Aleksandr Molkov
Sergei Fedorov
Vadim Pelevin
author_facet Aleksandr Molkov
Sergei Fedorov
Vadim Pelevin
author_sort Aleksandr Molkov
collection DOAJ
description Atmospheric correction of remote sensing imagery over optically complex waters is still a challenging task. Even algorithms showing a good accuracy for moderate and extremely turbid waters need to be tested when being used for eutrophic inland basins. Such a test was carried out in this study on the example of a Sentinel-3/OLCI image of the productive waters of the Gorky Reservoir during the period of intense blue-green algal bloom using data on the concentration of chlorophyll <i>a</i> and remote sensing reflectance measured from the motorboat at many points of the reservoir. The accuracy of four common atmospheric correction (AC) algorithms was examined. All of them showed unsatisfactory accuracy due to incorrect determination of atmospheric aerosol parameters and aerosol radiance. The calculated aerosol optical depth (AOD) spectra varied widely (AOD(865) = 0.005 − 0.692) even over a small area (up to 10 × 10 km) and correlated with the measured chlorophyll <i>a</i>. As a result, a part of the high water-leaving signal caused by phytoplankton bloom was taken as an atmosphere signal. A significant overestimation of atmospheric aerosol parameters, as a consequence, led to a strong underestimation of the remote sensing reflectance and low accuracy of the considered AC algorithms. To solve this problem, an algorithm with a fixed AOD was proposed. The fixed AOD spectrum was determined in the area with relatively “clean” water as 5 percentiles of AOD in all water pixels. The proposed algorithm made it possible to obtain the remote sensing reflectance with high accuracy. The slopes of linear regression are close to 1 and the intercepts tend to zero in almost all spectral bands. The determination coefficients are more than 0.9; the bias, mean absolute percentage error, and root-mean-square error are notably lower than for other AC algorithms.
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spelling doaj.art-f1928d75850f4ac18bf91b23abd1886f2023-11-30T22:48:57ZengMDPI AGRemote Sensing2072-42922022-07-011415366310.3390/rs14153663Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive WatersAleksandr Molkov0Sergei Fedorov1Vadim Pelevin2Laboratory of Hydrology and Ecology of Inland Waters, Radiophysical Department, Lobachevsky State University of Nizhny Novgorod, 23 Gagarin Avenue, 603022 Nizhny Novgorod, RussiaLaboratory of Hydrology and Ecology of Inland Waters, Radiophysical Department, Lobachevsky State University of Nizhny Novgorod, 23 Gagarin Avenue, 603022 Nizhny Novgorod, RussiaP.P. Shirshov Institute of Oceanology, 36 Nakhimovsky Prospekt, 117997 Moscow, RussiaAtmospheric correction of remote sensing imagery over optically complex waters is still a challenging task. Even algorithms showing a good accuracy for moderate and extremely turbid waters need to be tested when being used for eutrophic inland basins. Such a test was carried out in this study on the example of a Sentinel-3/OLCI image of the productive waters of the Gorky Reservoir during the period of intense blue-green algal bloom using data on the concentration of chlorophyll <i>a</i> and remote sensing reflectance measured from the motorboat at many points of the reservoir. The accuracy of four common atmospheric correction (AC) algorithms was examined. All of them showed unsatisfactory accuracy due to incorrect determination of atmospheric aerosol parameters and aerosol radiance. The calculated aerosol optical depth (AOD) spectra varied widely (AOD(865) = 0.005 − 0.692) even over a small area (up to 10 × 10 km) and correlated with the measured chlorophyll <i>a</i>. As a result, a part of the high water-leaving signal caused by phytoplankton bloom was taken as an atmosphere signal. A significant overestimation of atmospheric aerosol parameters, as a consequence, led to a strong underestimation of the remote sensing reflectance and low accuracy of the considered AC algorithms. To solve this problem, an algorithm with a fixed AOD was proposed. The fixed AOD spectrum was determined in the area with relatively “clean” water as 5 percentiles of AOD in all water pixels. The proposed algorithm made it possible to obtain the remote sensing reflectance with high accuracy. The slopes of linear regression are close to 1 and the intercepts tend to zero in almost all spectral bands. The determination coefficients are more than 0.9; the bias, mean absolute percentage error, and root-mean-square error are notably lower than for other AC algorithms.https://www.mdpi.com/2072-4292/14/15/3663Sentinel-3satellite imageryatmospheric correction algorithmsvalidationLIF LiDARUFL-9
spellingShingle Aleksandr Molkov
Sergei Fedorov
Vadim Pelevin
Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
Remote Sensing
Sentinel-3
satellite imagery
atmospheric correction algorithms
validation
LIF LiDAR
UFL-9
title Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
title_full Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
title_fullStr Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
title_full_unstemmed Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
title_short Toward Atmospheric Correction Algorithms for Sentinel-3/OLCI Images of Productive Waters
title_sort toward atmospheric correction algorithms for sentinel 3 olci images of productive waters
topic Sentinel-3
satellite imagery
atmospheric correction algorithms
validation
LIF LiDAR
UFL-9
url https://www.mdpi.com/2072-4292/14/15/3663
work_keys_str_mv AT aleksandrmolkov towardatmosphericcorrectionalgorithmsforsentinel3olciimagesofproductivewaters
AT sergeifedorov towardatmosphericcorrectionalgorithmsforsentinel3olciimagesofproductivewaters
AT vadimpelevin towardatmosphericcorrectionalgorithmsforsentinel3olciimagesofproductivewaters