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Uncertainty of atmospheric correction algorithms for chlorophyll α concentration retrieval in lakes from Sentinel-2 data

Dalia Grendaitė, Edvinas Stonevičius

2021Geocarto International22 citationsDOI

Abstract

One of the largest uncertainties in remote sensing data comes from atmospheric influence. This research aims to explain the uncertainties emanating from atmospheric correction (AC) product selection and how they influence chlorophyll α concentration retrieval in lakes in eastern Lithuania. We tested seven products from six AC processors (Acolite, Acolite Rayleigh, iCOR, Sen2Cor, C2RCC, C2X, and POLYMER) and 10 chlorophyll α retrieval algorithms with different architectures. The uncertainty of AC products transferred to chlorophyll α concentrations, and large differences in the chlorophyll α concentrations retrieved using different AC products were observed. The match-up analysis showed that chlorophyll α algorithms based on band difference performed best in terms of a high coefficient of determination and the lowest median bias when used with image-based, Sen2Cor, and TOA data. The results of this study highlight the uncertainties of AC products as well as how the selection of the chlorophyll α retrieval algorithm can mitigate the influence of AC selection.

Topics & Concepts

ChlorophyllChlorophyll aAtmospheric correctionRemote sensingSelection (genetic algorithm)Environmental scienceAlgorithmProduct (mathematics)Rayleigh scatteringMeteorologyComputer scienceMathematicsPhysicsGeographyBotanyBiologyReflectivityArtificial intelligenceOpticsGeometryMarine and coastal ecosystemsRemote Sensing in AgricultureWater Quality Monitoring and Analysis
Uncertainty of atmospheric correction algorithms for chlorophyll α concentration retrieval in lakes from Sentinel-2 data | Litcius