Title
A Unified Algorithm for the Atmospheric Correction of Satellite Remote Sensing Data over Land and Ocean.
Abstract
The atmospheric correction of satellite observations is crucial for both land and ocean remote sensing. However, the optimal approach for each area is different due to the large spectra difference in the ground reflectance between land and ocean. A unified atmospheric correction (UAC) approach based on a look-up table (LUT) of in situ measurements is developed to remove this difference. The LUT is used to select one spectrum as the in situ ground reflectance needed to obtain the initial aerosol reflectance, which in turn is used for determining the two closest aerosol models. The aerosol reflectance, obtained from these aerosol models, is then used to deduce the estimated ground reflectance. This UAC model is then used to process the Sea-viewing Wide Field-of-view Sensor (SeaWiFS) data, and its performance is validated with a large number of in situ measurements. The mean bias of the land reflectance for this model is 6.59% with a root mean square error (RMSE) of 19.61%. The mean bias and RMSE of the water-leaving reflectance are 7.59% and 17.10% validated by the in situ measurements using the above-water method, while they are 13.60% and 22.53% using the in-water method. The UAC model provides a useful tool for correcting the satellite-received reflectance without separately having to deal with land and ocean pixels. Further, it can seamlessly expand the satellite ocean color data for terrestrial use and improve quantitative remote sensing over land.
Year
DOI
Venue
2016
10.3390/rs8070536
REMOTE SENSING
Keywords
Field
DocType
atmospheric correction,land remote sensing,ocean color remote sensing,aerosol remote sensing,reflectance
Atmospheric correction,Meteorology,Ocean color,Lookup table,Satellite,SeaWiFS,Aerosol,Remote sensing,Mean squared error,Pixel,Geology
Journal
Volume
Issue
Citations 
8
7
0
PageRank 
References 
Authors
0.34
0
10
Name
Order
Citations
PageRank
Zhihua Mao1149.52
Delu Pan22411.67
Xianqiang He3411.17
Jianyu Chen4176.41
Bangyi Tao531.63
Peng Chen601.01
zengzhou hao722.61
Yan Bai845.76
Qiankun Zhu9145.01
Haiqing Huang1023.18