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Comparison of Green Vegetation Fraction Retrievals from SPOT-VEGETATION and MSG-SEVIRI Sensors   Bernard LACAZE (1) and Aydin ERTÜRK (2)  CNRS UMR 8586 PRODIG      Pôle de Recherche pour l’Organisation et la Diffusion de       	 			 l’Information Géographique, Paris,  France Turkish State Meteorological Service, Remote Sensing Division, Ankara, Turkey 1
Outline ,[object Object]
SPOT-VEGETATION : deriving Green Vegetation Fraction (GVF) from  scaled NDVI
MSG-SEVIRI : deriving GVF from spectral unmixing or scaled NDVI
Results  : Comparison of dekadal NDVI and GVF data (MSG-SEVIRI and SPOT-VEGETATION)
ConclusionIGARSS 2011 24-29 July, Vancouver, Canada 2
SPOT-VEGETATION sensor (since 1998) SPOT-4 and SPOT-5 sun synchronous orbit  altitude 822 km return interval 1 day  swath width 2250km IGARSS 2011 24-29 July, Vancouver, Canada 3
SPOT-VEGETATION 10-daily NDVI S10 :Maximum Value Compositing IGARSS 2011 24-29 July, Vancouver, Canada 4
SPOT-VEGETATION 10-daily NDVI NDVI data : HDF format, 1 byte/pixel Real NDVI = 0.004 * Digital Number -0.1 Status map : HDF format, 1 byte /pixel IGARSS 2011 24-29 July, Vancouver, Canada 5
MSG-SEVIRI sensor (since 2004) MSG-1 and MSG-2 SEVIRI one image every 15mn                                            Spinning Enhanced Visible and Infrared Imager resolution at nadir 3km (1km for channel 12) IGARSS 2011 24-29 July, Vancouver, Canada 6
MSG-SEVIRI daily NDVI products ,[object Object]
daily NDVI derived from LSA-SAF spectral albedos is available from  AMMASAT data base (area= West Africa, spatial resolution 0.05°, daily since september 2005)
daily experimental NDVI data available from EUMETSAT, since February 2011 (+ pre-operational data from 2010 : 176 days, elaborated with Turkish State Metorological Service)IGARSS 2011 24-29 July, Vancouver, Canada 7
MSG – SEVIRI NDVI   daily data           since sept. 2005 AMMASAT database  ,[object Object]
resolution 0.05°  1000 samples x 500 lines
daily data since septembre 2005
 NDVI calculatedfrom spectral albedosproduced by LSA-SAF (BRDF model Roujeanet al., 1992, k0parameter), 		model fitted over 5 days)
NetCDF format, integer, NDVI*10000, NDVI≥0,    -1 = ocean8
MSG – SEVIRI NDVI   monthly synthesis january 2010 AMMASAT database  9
MSG – SEVIRI NDVI   daily data Turkish  State Met. Service pre-operational data (2010)  ,[object Object]
 MSG native projection  3712 samples x 3712 lines
176 days (February-August 2010)
NDVI calculatedfrom top of atmospherereflectances, with BRDF correction (dailymean, maximum and minimum NDVI, number of obervations)
HDF5 format, byte, NDVI*100, NDVI≥010
MSG-SEVIRI NDVI 10-daily synthesis 0 0.7 Maximum NDVI 20-30 March 2010 IGARSS 2011 24-29 July Vancouver, Canada 11
MSG-SEVIRI NDVI 10-daily synthesis 21-31 May 2007 0 0.7 Maximum NDVI 20-30 March 2010 IGARSS 2011 24-29 July Vancouver, Canada 12
MSG – SEVIRI NDVI   daily data NDVE :Eumetsat experimental data (2011)  ,[object Object]
 MSG native projection  3712 samples x 3712 lines
daily data sinceFebruary 2011
 NDVI calculatedfrom top of atmospherereflectances, with BRDF correction
HDF5 format, with 899 bytes header13
MSG – SEVIRI  NDVI   daily data Eumetsat experimental data (2011)  surface type = IGBP land cover classification 14
From NDVI to Green Vegetation Fraction GVF is the fraction of green vegetation covering a unit area of horizontal soil, varying from 0 (bare soil) to 1 (full cover) GVF is independent of leaf and soil optical properties although it is defined with reference to green elements It is generally close to FAPAR (varying from 0 to 0.95) with the advantage of being defined independently of illumination conditions, making it an intrinsic canopy attribute for these reasons, GVF is a very good candidate for substitution of classical vegetation indices like NDVI IGARSS 2011 24-29 July, Vancouver, Canada 15
Availability of Green Vegetation Fraction data SPOT-VEGETATION : GVF is named fCover and available since October 2009 from Geoland 2 BIOPAR products database (archived data to be available end of 2011) ; Geoland2 is carried out in the context of GMES, a initiative of the European Commission, which aims to build up a European capacity for Global Monitoring of Environment and Security; other sites for obtaining or disseminating data : GEOSUCCESS, VGT4Africa, EUMETCAST, DevCoCast  MSG-SEVIRI: daily GVF (named  FVC Fraction of Vegetation Cover) is an operational product since March 2007 available from LSA SAF archive http://landsaf.meteo.pt/ IGARSS 2011 24-29 July, Vancouver, Canada 16
Deriving Green Vegetation Fraction (Fcover) from SPOT-VEGETATION data scaled NDVI BioPar Product User Manual  (2010) IGARSS 2011 24-29 July, Vancouver, Canada 17
Deriving Green Vegetation Fraction (Fcover) from SPOT-VEGETATION data NDVIsoil = min (NDVImin, 0.14) NDVImax = 0.85 BioPar Product User Manual  (2009) IGARSS 2011 24-29 July, Vancouver, Canada 18
Green Vegetation Fraction (FCover) from SPOT-VEGETATION data Fcover : 30-days composite, updated every 10 days using a sliding window  ADDITIONAL DATA: FCover-ERR (estimated uncertainty)  SMB (Status Map or Quality Flag) NMOD (number of clear observations) LMK (Land cover map = GLC 2000 Global Land Cover Map)  BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 19
Green Vegetation Fraction (FCover) from SPOT-VEGETATION data 10° x 10°     tiles GVF data available since oct. 2009; archived data available end of 2011 BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 20
Green Vegetation Fraction (FCover)     from SPOT-VEGETATION : West Africa, July 1-10, 2010 DN 0-250 = FVC*250 DN=255 : Invalid Example of SPOT-VEGETATION 10-daily GVF BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 21
Deriving Green Vegetation Fraction (FVC) from MSG-SEVIRI data EUMETSAT ,[object Object]

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COMPARISONOFGREENVEGETATIONFRACTIONRETRIEVALSFROMSPOT-VEGETATIONANDMSG-SEVIRISENSORS.pptx

  • 1. Comparison of Green Vegetation Fraction Retrievals from SPOT-VEGETATION and MSG-SEVIRI Sensors   Bernard LACAZE (1) and Aydin ERTÜRK (2) CNRS UMR 8586 PRODIG Pôle de Recherche pour l’Organisation et la Diffusion de l’Information Géographique, Paris, France Turkish State Meteorological Service, Remote Sensing Division, Ankara, Turkey 1
  • 2.
  • 3. SPOT-VEGETATION : deriving Green Vegetation Fraction (GVF) from scaled NDVI
  • 4. MSG-SEVIRI : deriving GVF from spectral unmixing or scaled NDVI
  • 5. Results : Comparison of dekadal NDVI and GVF data (MSG-SEVIRI and SPOT-VEGETATION)
  • 6. ConclusionIGARSS 2011 24-29 July, Vancouver, Canada 2
  • 7. SPOT-VEGETATION sensor (since 1998) SPOT-4 and SPOT-5 sun synchronous orbit altitude 822 km return interval 1 day swath width 2250km IGARSS 2011 24-29 July, Vancouver, Canada 3
  • 8. SPOT-VEGETATION 10-daily NDVI S10 :Maximum Value Compositing IGARSS 2011 24-29 July, Vancouver, Canada 4
  • 9. SPOT-VEGETATION 10-daily NDVI NDVI data : HDF format, 1 byte/pixel Real NDVI = 0.004 * Digital Number -0.1 Status map : HDF format, 1 byte /pixel IGARSS 2011 24-29 July, Vancouver, Canada 5
  • 10. MSG-SEVIRI sensor (since 2004) MSG-1 and MSG-2 SEVIRI one image every 15mn Spinning Enhanced Visible and Infrared Imager resolution at nadir 3km (1km for channel 12) IGARSS 2011 24-29 July, Vancouver, Canada 6
  • 11.
  • 12. daily NDVI derived from LSA-SAF spectral albedos is available from AMMASAT data base (area= West Africa, spatial resolution 0.05°, daily since september 2005)
  • 13. daily experimental NDVI data available from EUMETSAT, since February 2011 (+ pre-operational data from 2010 : 176 days, elaborated with Turkish State Metorological Service)IGARSS 2011 24-29 July, Vancouver, Canada 7
  • 14.
  • 15. resolution 0.05°  1000 samples x 500 lines
  • 16. daily data since septembre 2005
  • 17. NDVI calculatedfrom spectral albedosproduced by LSA-SAF (BRDF model Roujeanet al., 1992, k0parameter), model fitted over 5 days)
  • 18. NetCDF format, integer, NDVI*10000, NDVI≥0, -1 = ocean8
  • 19. MSG – SEVIRI NDVI monthly synthesis january 2010 AMMASAT database 9
  • 20.
  • 21. MSG native projection  3712 samples x 3712 lines
  • 23. NDVI calculatedfrom top of atmospherereflectances, with BRDF correction (dailymean, maximum and minimum NDVI, number of obervations)
  • 24. HDF5 format, byte, NDVI*100, NDVI≥010
  • 25. MSG-SEVIRI NDVI 10-daily synthesis 0 0.7 Maximum NDVI 20-30 March 2010 IGARSS 2011 24-29 July Vancouver, Canada 11
  • 26. MSG-SEVIRI NDVI 10-daily synthesis 21-31 May 2007 0 0.7 Maximum NDVI 20-30 March 2010 IGARSS 2011 24-29 July Vancouver, Canada 12
  • 27.
  • 28. MSG native projection  3712 samples x 3712 lines
  • 30. NDVI calculatedfrom top of atmospherereflectances, with BRDF correction
  • 31. HDF5 format, with 899 bytes header13
  • 32. MSG – SEVIRI NDVI daily data Eumetsat experimental data (2011) surface type = IGBP land cover classification 14
  • 33. From NDVI to Green Vegetation Fraction GVF is the fraction of green vegetation covering a unit area of horizontal soil, varying from 0 (bare soil) to 1 (full cover) GVF is independent of leaf and soil optical properties although it is defined with reference to green elements It is generally close to FAPAR (varying from 0 to 0.95) with the advantage of being defined independently of illumination conditions, making it an intrinsic canopy attribute for these reasons, GVF is a very good candidate for substitution of classical vegetation indices like NDVI IGARSS 2011 24-29 July, Vancouver, Canada 15
  • 34. Availability of Green Vegetation Fraction data SPOT-VEGETATION : GVF is named fCover and available since October 2009 from Geoland 2 BIOPAR products database (archived data to be available end of 2011) ; Geoland2 is carried out in the context of GMES, a initiative of the European Commission, which aims to build up a European capacity for Global Monitoring of Environment and Security; other sites for obtaining or disseminating data : GEOSUCCESS, VGT4Africa, EUMETCAST, DevCoCast MSG-SEVIRI: daily GVF (named FVC Fraction of Vegetation Cover) is an operational product since March 2007 available from LSA SAF archive http://landsaf.meteo.pt/ IGARSS 2011 24-29 July, Vancouver, Canada 16
  • 35. Deriving Green Vegetation Fraction (Fcover) from SPOT-VEGETATION data scaled NDVI BioPar Product User Manual (2010) IGARSS 2011 24-29 July, Vancouver, Canada 17
  • 36. Deriving Green Vegetation Fraction (Fcover) from SPOT-VEGETATION data NDVIsoil = min (NDVImin, 0.14) NDVImax = 0.85 BioPar Product User Manual (2009) IGARSS 2011 24-29 July, Vancouver, Canada 18
  • 37. Green Vegetation Fraction (FCover) from SPOT-VEGETATION data Fcover : 30-days composite, updated every 10 days using a sliding window ADDITIONAL DATA: FCover-ERR (estimated uncertainty) SMB (Status Map or Quality Flag) NMOD (number of clear observations) LMK (Land cover map = GLC 2000 Global Land Cover Map) BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 19
  • 38. Green Vegetation Fraction (FCover) from SPOT-VEGETATION data 10° x 10° tiles GVF data available since oct. 2009; archived data available end of 2011 BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 20
  • 39. Green Vegetation Fraction (FCover) from SPOT-VEGETATION : West Africa, July 1-10, 2010 DN 0-250 = FVC*250 DN=255 : Invalid Example of SPOT-VEGETATION 10-daily GVF BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 21
  • 40.
  • 41. The algorithm relies on an optimised Spectral Mixture Analysis (SMA) technique. In a first step, an exhaustive training set for the soil and vegetation components is defined. Second, a Gaussian Mixture Model is fit to the training data. Third, a Bayesian model selection is used to compute the relative likelihood of membership in each soil/vegetation single-model. FVC is then estimated using a linear-weighted combination single-model estimateIGARSS 2011 24-29 July, Vancouver, Canada 22
  • 42. Daily Green Vegetation Fraction (FVC) from MSG-SEVIRI data EUMETSAT 4 sub-images HDF5 format IGARSS 2011 24-29 July, Vancouver, Canada 23
  • 43.
  • 44. Maximum of 10 daily NDVI values, MSG-SEVIRI experimental product, resampled at 0.025° resolution (daily mean of n available data during each day)IGARSS 2011 24-29 July, Vancouver, Canada 24
  • 45. Results : SPOT-VEGETATION NDVI S10 Example : 10-day NDVI (1-10 July 2010), West Africa area DN Cloud contaminated pixels IGARSS 2011 24-29 July, Vancouver, Canada 25
  • 46. Results : SPOT-VEGETATION NDVI Example : 10-day NDVI (1-10 July 2010), West Africa area cloudy pixels (from status map) in white DN IGARSS 2011 24-29 July, Vancouver, Canada 26
  • 47. Results : MSG NDVI Example : 10-day NDVI (1-10 July 2010), West Africa area maximum of 10 daily mean values NDVI x NDVI x 100 IGARSS 2011 24-29 July, Vancouver, Canada 27
  • 48. Comparison of SPOT-VEG and MSG NDVI Example : 10-day NDVI (1-10 July 2010), West Africa area Histograms of NDVI values (cloud-free pixels only) SPOT-VEG MSG-SEVIRI IGARSS 2011 24-29 July, Vancouver, Canada 28
  • 49. Comparison of SPOT-VEG and MSG NDVI Example : 10-day NDVI (1-10 July 2010), West Africa area cloud-free pixels only MSG SPOT-VEG IGARSS 2011 24-29 July, Vancouver, Canada 29
  • 50.
  • 51. Mean of 10 daily MSG-SEVIRI operational product FVC (LSA-SAF) , resampled at 0.025° resolution
  • 52. Mean of 10 daily MSG-SEVIRI scaled NDVI, using threshold values NDVImin = 0.098 and NDVI max = 0.71 ( values proposed by NOAA-NESDIS, Bob YU pers. comm.)IGARSS 2011 24-29 July, Vancouver, Canada 30
  • 53. Results : SPOT-VEG GVF (scaled NDVI) Example : 10-day FCOVER (1-10 July 2010), West Africa area grey= no vegetation cover (GVF = 0) ; white = invalid data BioPar Product FCover GVF (%) BioPar Product FCover IGARSS 2011 24-29 July, Vancouver, Canada 31
  • 54. Results : MSG-SEVIRI GVF (LSA SAF FVC) mean of daily FCOVER (1-10 July 2010), West Africa area Grey= no vegetation cover (GVF=0) GVF (%) derived from FVC product IGARSS 2011 24-29 July, Vancouver, Canada 32
  • 55. Comparison of SPOT-VEG and MSG GVF Example : 10-day GVF 1-10 July 2010), West Africa area Cloud-free pixels with GVF>0 only GVFmsg = 0.85 * GVFspot-veg + 10.49 r2 = 0.86 IGARSS 2011 24-29 July, Vancouver, Canada 33
  • 56. Comparison of SPOT-VEG and MSG GVF Example : all Africa, years 2008,2009 IGARSS 2011 24-29 July, Vancouver, Canada 34
  • 57. Results: MSG-SEVIRI GVF(scaled NDVI) mean of daily GVF (1-10 July 2010), West Africa area Grey= no vegetation cover GVF (%) GVF (%) NDVImin = 0.098; NDVImax = 0.71 (NOAA-NESDIS, 2011) IGARSS 2011 24-29 July, Vancouver, Canada 35
  • 58. Comparison of SPOT-VEG and MSG FVC Example : 10-day GVF 1-10 July 2010), West Africa area Cloud-free pixels with GVF>0 only MSG GVFmsg = 0.71 * GVFspot-veg + 17.88 r2 = 0.67 SPOT-VEG IGARSS 2011 24-29 July, Vancouver, Canada 36
  • 59. Comparison SPOT-VEG vs MSG GVF Example : desert pixels (GVF = 0) yellow : GVF = 0 for both data sources orange : only GVF SPOT-VEG=0 SPOT-VEG and MSG (FVC from LSA-SAF) SPOT-VEG and MSG (GVF from scaled NDVI) IGARSS 2011 24-29 July, Vancouver, Canada 37
  • 60.
  • 61. Both SPOT-VEGETATION (10-daily) and MSG-SEVIRI (daily) GVF data can be obtained on a near real-time basis: status of products = operational
  • 62. MSG-SEVIRI has lower spatial resolution than SPOT-VEG, but provides a higher number of available observations in regions with high cloud occurrence, and can be used for high temporal resolution monitoring (1 to 5 days)IGARSS 2011 24-29 July, Vancouver, Canada 38
  • 63.
  • 64. Discrepancies between GVF results from MSG and SPOT-VEG are observed, mainly overestimation of GVF in arid areas when using MSG data
  • 65. Further research is needed to validate FVC estimations and to ensure intercomparability of results between MSG, SPOT-VEG, MODIS, METOP,… using preferably the same preprocessing/ processing methods to derive GVFIGARSS 2011 24-29 July, Vancouver, Canada 39
  • 66. Thank you for your attention lacaze.bernard@gmail.com Télédétection peer-reviewed electronic open-access journal http://www.teledetection.net IGARSS 2011 24-29 July, Vancouver, Canada 40