Abstract

Atmospheric correction is a fundamental process of ocean color remote sensing to remove the atmospheric effect from the top-of-atmosphere. Generally, Near Infrared (NIR) based algorithms perform well for clear waters, while Ultraviolet (UV) based algorithms can obtain good results for turbid waters. However, the latter tends to produce noisy patterns for clear waters. An ideal and practical solution to deal with such a dilemma is to apply NIR- and UV-based algorithms for clear and turbid waters, respectively. We propose a novel atmospheric correction method that integrates the advantages of UV- and NIR-based atmospheric correction (AC) algorithms for coastal ocean color remote sensing. The new approach is called UV-NIR combined AC algorithm. The performance of the new algorithm is evaluated based on match-ups between GOCI images and the AERONET-OC dataset. The results show that the values of retrieved Rrs (Remote Sensing Reflectance) at visible bands agreed well with the in-situ observations. Compared with the SeaDAS (SeaWiFS Data Analysis System) standard NIR algorithm, the new AC algorithm can achieve better precision and provide more available data.

Highlights

  • The Geostationary Ocean Color Imager (GOCI), the world’s first geostationary ocean color spaceborne instrument, is onboard the Communication, Ocean, and MeteorologicalSatellite (COMS), which was launched in 2010 [1]

  • Sensor (SeaWiFS), Medium Resolution Imaging Spectrometer (MERIS), and GOCI, do not include SWIR bands, which limits the application of this method

  • Through the analysis of the NASA-STD atmospheric correction (AC) algorithm and specific implementation process of the UV AC (412 nm) algorithm, the starting point of the UV AC (412 nm) and NASA-STD AC is to assume that the water leaving reflectance of 412-nm or 865-nm band is zero; and the reflectance after Rayleigh correction is regarded as the contribution of aerosol scattering, which is extrapolated to other bands’ aerosol scattering rates to complete AC

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Summary

A Novel Framework of Integrating UV and NIR Atmospheric

Feng Qiao 1,2 , Jianyu Chen 1,2,3,4, *, Zhihua Mao 1,2,3 , Bing Han 5 , Qingjun Song 6,7 , Yuying Xu 2,4 and Qiankun Zhu 2,3. Key Laboratory of Space Ocean Remote Sensing and Application, Ministry of Natural Resources, Beijing 100081, China

Introduction
Materials and Methods
NASA-STD AC Algorithm
UV AC Algorithm
UV-NIR Jointed AC Algorithm
GOCI and In-Suit Data
Performance Assessment
Evaluation of NIR Algorithms Using Simulated Data
AC Algorithm Applicable Area Division
Areas the UVSeaDAS and NIR sets
March the nm on the Estuary
Comparison
Algorithm Performance Evaluation Using Satellite Image
Evaluation of UV-NIR AC Using In-Situ Data
Statistical
Conclusions
Full Text
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