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Index (NDWI), the Hue (from RGB to HSV transformation)
and the reflectance in the middle infra-red of
SPOT/VEGETATION data. The product includes also
information about the seasonality, i.e. the date of filling and the
date of drying. The Université Catholique de Louvain (UCL) is
in charge of the methodology, whereas the processing line is
developed and will run in NRT at VITO. The
SPOT/VEGETATION water bodies product should be available
before the end of the year. In a second step, the detection
algorithm is being adapted to MODIS data (250m resolution) to
identify smaller ponds.
The global burnt area product derived from the daily
SPOT/VEGETATION data is still in development at the
University of Leicester. Seasonality metrics (start, end and
timing of maximum burning) are being added to the improved
L3JRC algorithm (Tansey at al., 2008). At final, the processing
line will be implemented and run at VITO. Further, in the
project life, the methodology will be adapted to AATSR sensor
data.
5. CONCLUSION
As geoland2 constitutes a major step forward in the
implementation of the GMES Land Monitoring Core Service
(LMCS), the BioPar CMS intends to bring a main brick to build
the Global component of the LMCS. Through a global
systematic monitoring service, the Global component of the
LMCS aims to provide near real time bio-geophysical
parameters at global scale, addressing primarily the 13
terrestrial EC Vs, and describing the vegetation state and
dynamic. The principal scope of the Global component of the
LMCS is to deliver information products and services on the
status and evolution of land surfaces in support to specific EU
policies at international level and European commitments under
international treaties and conventions, such as the three Rio
conventions on Climate Change, Desertification and
Biodiversity.
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7. AKNOWLEDGEMENT
The research leading to the results presented in this paper has
received funding from the European Community’s Seventh
Framework Program (FP7/2007-2013) under grant agreement
n°218795. All these products are under copyright geoland2.