DocumentCode :
21491
Title :
Spectral Response Function Comparability Among 21 Satellite Sensors for Vegetation Monitoring
Author :
Gonsamo, Alemu ; Chen, Jing M.
Author_Institution :
Dept. of Geogr., Univ. of Toronto, Toronto, ON, Canada
Volume :
51
Issue :
3
fYear :
2013
fDate :
Mar-13
Firstpage :
1319
Lastpage :
1335
Abstract :
Global and regional vegetation assessment strategies often rely on the combined use of multisensor satellite data. Variations in spectral response function (SRF) which characterizes the sensitivity of each spectral band have been recognized as one of the most important sources of uncertainty for the use of multisensor data. This paper presents the SRF differences among 21 Earth observation satellite sensors and their cross-sensor corrections for red, near infrared (NIR), and shortwave infrared (SWIR) reflectances, and normalized difference vegetation index (NDVI) aimed at global vegetation monitoring. The training data set to derive the SRF cross-sensor correction coefficients were generated from the state-of-the-art radiative transfer models. The results indicate that reflectances and NDVI from different satellite sensors cannot be regarded as directly equivalent. Our approach includes a polynomial regression and spectral curve information generated from a training data set representing a wide dynamics of vegetation distributions to minimize land cover specific SRF cross-sensor correction coefficient variations. The absolute mean SRF caused differences were reduced from 33.9% (20.1%) to 9.4 % (6%) for red, from 3.2 % (8.9%) to 1% (1.1% ) for NIR, from 2.9% (3.6 %) to 1.9% (1.6%) for SWIR, and from 7.1 % (9%) to 1.8% (1.7% ) for NDVI, after applying the SRF cross-sensor correction coefficients on independent top of canopy (top of atmosphere) data for all-embraced-sensor comparisons. Variations in processing strategies, non spectral differences, and algorithm preferences among sensor systems and data streams hinder cross-sensor spectra and NDVI comparability and continuity. The SRF cross-sensor correction approach provided here, however, can be used for studies aiming at large-scale vegetation monitoring with acceptable accuracy.
Keywords :
environmental monitoring (geophysics); infrared imaging; radiative transfer; reflectivity; regression analysis; vegetation; vegetation mapping; Earth observation satellite sensors; NDVI; SRF cross-sensor correction approach; SRF cross-sensor correction coefficients; SRF differences; all-embraced-sensor comparisons; cross-sensor corrections; data streams; global vegetation assessment strategies; land cover specific SRF cross-sensor correction coefficient variations; large-scale vegetation monitoring; multisensor data; multisensor satellite data; near infrared reflectances; normalized difference vegetation index; polynomial regression; radiative transfer models; regional vegetation assessment strategies; shortwave infrared reflectances; spectral curve information; spectral response function comparability; training data set; uncertainty; vegetation distributions; Atmospheric measurements; Atmospheric modeling; Monitoring; Satellites; Sensors; Vegetation mapping; Cross-sensor comparability; Earth Observing System (EOS) land validation core sites; normalized difference vegetation index (NDVI) continuity; reflectance; spectral response function (SRF);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2012.2198828
Filename :
6226844
Link To Document :
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