DocumentCode :
67748
Title :
Near Real-Time Vegetation Monitoring at Global Scale
Author :
Verger, Aleixandre ; Baret, Frederic ; Weiss, Marie
Author_Institution :
Centre for Ecological Res. & Forestry Applic. (CREAF), Barcelona, Spain
Volume :
7
Issue :
8
fYear :
2014
fDate :
Aug. 2014
Firstpage :
3473
Lastpage :
3481
Abstract :
The NRT algorithm for near-real time estimation of global LAI, FAPAR, and FCOVER variables from SPOT/VEGETATION (VGT) satellite data is described here. It consists of three steps: 1) neural networks (NNT) (one for each variable) to provide instantaneous estimates from daily VGT-P reflectances; 2) a multistep filtering approach to eliminate data mainly affected by atmospheric effects and snow cover; and 3) Savitzky-Golay and climatology temporal smoothing and gap filling techniques to ensure consistency and continuity as well as short-term projection of the product dynamics. Performances of NRT estimates were evaluated by comparing with other products over the 2005-2008 period: 1) the offline estimates from the application of the algorithm over historical time series (HIST); 2) the geoland2 version 1 products also issued from VGT (GEOV1/VGT); and 3) ground data. NRT rapidly converges closely to the HIST processing after six dekads (10-day period) with major improvement after two dekads. Successive reprocessing will, therefore, correct for some instabilities observed in the presence of noisy and missing data. The root-mean-square error (RMSE) between NRT and HIST LAI is lower than 0.4 in all cases. It shows a rapid exponential decay with the number of observations in the composition window with convergence when 30 observations are available. NRT products are in good agreement with ground data (RMSE of 0.69 for LAI, 0.09 for FAPAR, and 0.14 for FCOVER) and consistent with GEOV1/VGT products with a significant improvement in terms of continuity (only 1% of missing data) and smoothness, especially at high latitudes, and Equatorial areas.
Keywords :
neural nets; remote sensing; snow; time series; vegetation mapping; AD 2005 to 2008; FAPAR; FCOVER; GEOV1 products; HIST LAI; HIST processing; LAI; NRT estimates; NRT products; SPOT satellite data; VEGETATION satellite data; VGT; VGT products; VGT-P reflectances; atmospheric effects; climatology temporal smoothing; composition window; exponential decay; historical time series; missing data; multistep filtering approach; near-real time vegetation estimation; neural networks; noisy data; rapid exponential decay; root-mean-square error; snow cover; time series; Artificial neural networks; Earth; Estimation; Monitoring; Noise; Time series analysis; Vegetation mapping; Biophysical variables; SPOT/VEGETATION (VGT); consistency; continuity; global scale; near real-time (NRT);
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2014.2328632
Filename :
6842660
Link To Document :
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