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Land Color

Land Color. May 2, 1996 North of Denver, CO. August 16, 1995 Central Brazil. Measuring Vegetation.

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Land Color

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  1. Land Color May 2, 1996 North of Denver, CO August 16, 1995 Central Brazil

  2. Measuring Vegetation • By carefully measuring the wavelengths and intensity of visible and near-infrared light reflected by the land surface back up into space a "Vegetation Index" may be formulated to quantify the concentrations of green leaf vegetation around the globe. • Normalized Difference Vegetation Index (NDVI) • Distinct colors (wavelengths) of visible and near-infrared sunlight reflected by the plants determine the density of green on a patch of land and ocean. • The pigment in plant leaves, chlorophyll, strongly absorbs visible light (from 0.4-0.5 and from to 0.6-0.7 μm) for use in photosynthesis. The cell structure of the leaves, on the other hand, strongly reflects near-infrared light (from 0.7 to 1.1 μm). • The more leaves a plant has or the more phytoplankton there is in the column, the more these wavelengths of light are affected, respectively.

  3. violet - blue - green-yellow-orange - red - near IR

  4. What colors do we need to observe? Ocean Plants Soils

  5. Attenuation in the Visible Wavelengths(molecular/no aerosol) ozone Blue and light blue scattered 765 nm 865 nm Grant Petty, 2004

  6. Blue and Light Blue

  7. Daytime Visibility Distant Dark Objects Appear Brighter “Clear” Day Hazy Day

  8. Daytime Visibility consider scattering by aerosols White Sunlight Top of Atmosphere Color and Intensity Distance to the Dark Object

  9. Daytime Visibility White Sunlight Top of Atmosphere Increased contribution of white light Object appears lighter with distance Longer Distance to the Dark Object

  10. Daytime Visibility Distant Dark Objects Appear Brighter “Clear” Day Hazy Day

  11. What the satellite sees White Sunlight Top of Atmosphere molecular and aerosol scattering 400→ 500nm near IR transparent plants 500-600 nm ocean water 450-480 nm

  12. Ocean Color • Locates and enables monitoring of regions of high and low bio-activity. • Food (phytoplankton associated with chlorophyll) • Climate (phytoplankton possible CO2 sink) • Reveals ocean current structure and behavior • Seasonal influences • River and Estuary influences • Boundary currents • Reveals Anthropogenic influences (pollution) • Remote sensing reveals large and small scale structures that are very difficult to observe from the surface.

  13. Ocean Color Haze Bloom?

  14. Aerosols over Ocean RV Ron Brown Central Pacific AOT=0.08 Sea of Japan AOT=0.98

  15. Atmospheric Aerosol Correction Procedure Cloudy Ln (Optical Thickness) Aerosols Cloudless-Polluted Molecular Scattering Satellite Channels Molecules Blue Green Red Near-IR Aerosol

  16. Atmospheric Aerosol Correction Procedure Black-dashed: Aerosol Scattering Blue-dashed: Molecular Scattering Cloudy Ln (Optical Thickness) More Polluted Blue Green Red Near-IR Over 90% of the satellite measured radiance is contributed by atmospheric aerosols and molecular scattering

  17. Atmospheric Aerosol Correction Procedure Black-dashed: Aerosol Scattering Blue-dashed: Molecular Scattering Cloudy Ln (Optical Thickness) More Polluted Blue Green Red Near-IR Over 90% of the satellite measured radiance is contributed by atmospheric aerosols and molecular scattering

  18. Atmospheric Aerosol Correction Procedure for Ocean Color Near IR Wavelengths

  19. Angstrom Exponent

  20. Over-Ocean Aerosol Optical Thickness Neg Miller, Bartholomew, Reynolds

  21. NDVI • NDVI is calculated from the visible and near-infrared light reflected by vegetation. • Healthy vegetation • absorbs visible light and reflects a large portion of the near-IR light • Unhealthy or sparse vegetation • reflects more visible light and less near-IR light • Real vegetation is highly variable

  22. NDVI NDVI = (NIR — VIS)/(NIR + VIS) Calculations of NDVI for a given pixel always result in a number that ranges from minus one (-1) to plus one (+1) --no green leaves gives a value close to zero. --zero means no vegetation --close to +1 (0.8 - 0.9) indicates the highest possible density of green leaves. NASA Earth Observatory (Illustration by Robert Simmon)

  23. Satellite NDVI data sources NOAA 14 AVHRR MODIS NOAA 11 AVHRR NOAA 9 AVHRR SPOT NOAA 7 AVHRR 1980 1985 1990 1995 2000 2005 2010 SeaWiFS NOAA-16 NPP NOAA-18 NOAA 9 NOAA-17 C. Tucker

  24. Terra Satellite • December 1999: Terra spacecraft • Moderate-resolution Imaging Spectroradiometer, or MODIS, that greatly improves scientists’ ability to measure plant growth on a global scale. • MODIS: higher spatial resolution (up to 250-meter resolution) than AVHRR

  25. MODIS Global NDVI

  26. Average NDVI 1981-2006 ~40,000 orbits of satellite data C. Tucker

  27. Marked contrasts between the dry and wet seasons (~300 mm/yr @ Senegal) C. Tucker

  28. Beltsville USA winter wheat biomass C. Tucker

  29. SNDVI vs. total dry biomass Explained 80% of biomass accumulation C. Tucker

  30. Species mapping with physiological indices Meg Andrew

  31. Creosote Ag Spectral Indices: NDVI NDVI = 0.922 NDVI = 0.356 Meg Andrew, UC Davis

  32. Global Vegetation Mapping SeaWiFS Ocean Chlorophyll Land NDVI

  33. 5 SeaWiFS land bands

  34. Tasmanian Sea

  35. A break in the clouds over the Barents Sea on August 1, 2007 revealed a large, dense phytoplankton bloom to the orbiting MODIS aboard the Terra satellite. The bright aquamarine hues suggest that this is likely a coccolithophore bloom. The visible portion of this bloom covers about 150,000 square kilometers (57,000 square miles) or roughly the area of Wisconsin.

  36. Supplements

  37. a) The light path of the water-leaving radiance. b) Shows the attenuation of the water-leaving radiance. c) Scattering of the water-leaving radiance out of the sensor's FOV. d) Sun glint (reflection from the water surface). e) Sky glint (scattered light reflecting from the surface). f) Scattering of reflected light out of the sensor's FOV. g) Reflected light is also attenuated towards the sensor. h) Scattered light from the sun which is directed toward the sensor. i) Light which has already been scattered by the atmosphere which is then scattered toward the sensor. j) Water-leaving radiance originating out of the sensor FOV, but scattered toward the sensor. k) Surface reflection out of the sensor FOV which is then scattered toward the sensor. Lw Total water-leaving radiance. Lr Radiance above the sea surface due to all surface reflection effects within the IFOV. Lp Atmospheric path radiance. (Gordan and Wang)

  38. Sky Imaging 500 nm RV Ron Brown Central Pacific AOT=0.08 AMF Niamey, Niger AOT=2.5-3 Sea of Japan AOT=0.98

  39. Nighttime Visibility Distant Bright Objects are dimmer

  40. Attenuation in the Visible Wavelengths Grant Petty, 2004

  41. Aerosol Hygroscopic Growth • Deliquescence • Dry crystal to solution droplet • Hygroscopic • Water-attracting • Efflorescence • Solution droplet to crystal (requires ‘nucleation’) • Hysteresis • Particle size and phase depends on humidity history ENVI-1200 Atmospheric Physics

  42. Atmospheric Correction Methods • Develop Theoretical Atmosphere. Include: • Rayleigh Scattering - (Strongest in Blue region) • Ozone • Aerosols - (Absorption and Scattering Characteristics) • Use Data from Infrared (IR) band and assume that all of this signal comes from the atmosphere to get knowledge of aerosols. • Solve Radiative Transfer Equation • Geometry • Location (types of aerosols possible) • Other considerations: • Sun Glint. Avoid - Use wind speed to estimate surface roughness. • White Caps. Measure - Use wind speed to estimate coverage.

  43. Atmospheric Aerosol Correction Procedure Cloudy Clear H2O Cloudless-Polluted Upwelling Radiance At Satellite Biological Blue Green Red Near-IR

  44. History of the NDVI& Vegetation Indices Compton Tucker NASA/UMD/CCSPO

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