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Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary E. Martin, Mary E. Martin, Scott V. Ollinger, & Scott V. Ollinger, & Carol A. Wessman Carol A. Wessman Raymond F. Kokaly Raymond F. Kokaly U.S. Geological Survey U.S. Geological Survey Ohio State Univ. Ohio State Univ.

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Page 1: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Characterizing non-pigment canopy biochemistry from imaging spectrometer

data for studying ecosystem processes

Gregory P. Asner,Gregory P. Asner,

Mary E. Martin,Mary E. Martin,

Scott V. Ollinger, &Scott V. Ollinger, &

Carol A. Carol A. WessmanWessman

Raymond F. KokalyRaymond F. Kokaly

U.S. Geological SurveyU.S. Geological Survey

Ohio State Univ.Ohio State Univ.

Page 2: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

General Research Goals

• To quantify non-pigment biochemistry at the leaf and canopy levels using reflectance spectroscopy

• Apply knowledge of leaf spectroscopy for detailed characterization of vegetation

• Quantify canopy biochemistry to increase understanding of fine-scale variations in ecosystem processes over large areas

Page 3: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary
Page 4: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Types of Remote Sensing

Electromagnetic

Wavelength (m)

Passive

Systems

Active

Systems

0.1 - 0.4 Ultraviolet (UV)

0.4 – 0.7 Visible

0.7 – 1.4

1.4 – 3.0

Near-Infrared

Shortwave Infrared

3.0 – 1,000 Infrared

1,000-

300,000

Microwave

Airborne CamerasAirborne Cameras

RadiometersRadiometers

SpectrometersSpectrometers

LIDARLIDAR

Radar (SAR)Radar (SAR)

Page 5: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

•Satellite-basedSatellite-basedImaging Spectroscopy Data: Imaging Spectroscopy Data:

EO-1 HyperionEO-1 Hyperion

• AirborneAirborne Imaging Spectroscopy Data:Imaging Spectroscopy Data:

HyMapHyMapProbeProbeCASICASI AVIRISAVIRIS

Imaging SpectrometersImaging Spectrometers

EO-1EO-1 SpacecraftSpacecraft

NASA ER-2NASA ER-2

Page 6: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Trends in quantifying non-pigment leaf biochemistry

• Greater understanding of lab, field and remote sensing level spectra in relation to biochemical composition

• Increased use of full spectrum or specific biochemical absorption features to characterize vegetation

• Greater application of imaging spectroscopy to understand ecosystem processes

Page 7: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Understanding vegetation spectra in relation to biochemical composition

• Water

• Nitrogen (in chlorophylls and proteins)

• Lignin and Cellulose

• Non-Photosynthetic Vegetation

Page 8: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly, REMOTE SENS. ENVIRON. 84:437-456 (2003)

Page 9: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Water• Water content/potential is a limiting factor

for plant transpiration (photosynthesis and carbon gain) and thus growth and development

Page 10: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary
Page 11: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly and Clark, REMOTE SENS. ENVIRON. 67:267–287 (1999)REMOTE SENS. ENVIRON. 67:267–287 (1999)

Page 12: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Spectroscopic Estimates of Leaf/Canopy Water

• Leaf/Canopy Liquid Water Thickness• Gao & Goetz, 1994

• Canopy Equivalent Water Thickness• Green et al., 1991 & Roberts et al. 1997

• Canopy Relative Water Content• Serrano et al. 2000

• Foliar Water Potential • Stimson et al. 2005

Page 13: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Serrano et al., REMOTE SENS. ENVIRON. 74:570–581 (2000)

Page 14: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

NDWI = NDWI = (R860 - R1240)(R860 - R1240)

(R860 + R1240)(R860 + R1240)

NDII = NDII = (R819 - R1649)(R819 - R1649)

(R819 + R1649)(R819 + R1649)

Page 15: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Stimson et al., Remote Sensing of Environment 96 (2005) 108– 118

Foliar Water Potential (MPa) Foliar Water Potential (MPa)

Page 16: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

980

nm

1200

nm

Leaf

(Lab)

Canopy

(AVIRIS)

Clark et al., Remote Sensing of Environment 96 (2005) 375 – 398Remote Sensing of Environment 96 (2005) 375 – 398850 1350 1850

Page 17: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Nitrogen

• By dry weight, very low abundance in leaves, only 0.5 to 4%

• Present in important biochemical constituents of plants– Chlorophyll– Protein

• Linked by field studies to rates of ecosystem functioning (carbon fixation) and widely used in ecosystem models

Page 18: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Nitrogen in Proteins

• Proteins composed of amino acids ranging from a 100 to 100,000 in number

Page 19: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

RuBisCO

• Ribulose-1,5-bisphosphate carboxylase/oxygenase, catalyzes the first major step of carbon fixation

• RuBisCO is the most abundant protein in leaves (maybe the most abundant on Earth).

Page 20: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly, REMOTE SENS. ENVIRON. 75:153–161 (2001)

Page 21: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly, REMOTE SENS. ENVIRON. 75:153–161 (2001)

Page 22: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly and Clark, REMOTE SENS. ENVIRON. 67:267–287 (1999)REMOTE SENS. ENVIRON. 67:267–287 (1999)

Page 23: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Nitrogen inChlorophyll

Page 24: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Mutanga et al., Remote Sensing of Environment 96 (2005) 108– 118

Page 25: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Biochemical Components of Plants

• Cellulose– Cellulose monomers (β-glucose) are linked

together through 1→4 glycosidic bonds– Cellulose is a common material in plant cell

walls– Cellulose is the most abundant form of living

terrestrial biomass (R.L. Crawford 1981).

Page 26: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Biochemical Components of Plants

• Lignin– 10% to 40% by dry weight– Lignin is a large macromolecule with molecular

mass in excess of 10,000 amu.– Structural component of plant cell walls.– It is hydrophobic and aromatic in nature.– Lignin concentration in litter has strong

influence on ecosystem processes

Page 27: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

CelluloseCellulose

LigninLignin

Page 28: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

PineCellulose:Lignin = 1.5

= 3.8

GrassCellulose:Lignin

Kokaly et al., Remote Sensing of Environment, in press

Page 29: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Apply knowledge of leaf spectroscopy for detailed

characterization of vegetation

Page 30: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Cerro Grande FireCerro Grande FireLos Alamos,Los Alamos,New MexicoNew Mexico

Page 31: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary
Page 32: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

PineCellulose:lignin =1.5

=3.8

GrassCellulose:lignin

Kokaly et al., Remote Sensing of Environment, in press

Page 33: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

AVIRIS Dry Grass

AVIRISDry Pine

Kokaly et al., Remote Sensing of Environment, in press

Page 34: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Results: AVIRIS Maps

GreenGreenVegetationVegetation

Mineral/AshMineral/Ash

Mineral-1Mineral-1mm

Mineral-2Mineral-2mm

Dry ConiferDry Conifer

Dry & GreenDry & GreenConiferConifer

Straw mattingStraw matting

Ash/CharcoalAsh/Charcoal

Straw mattingStraw matting & Green grass& Green grass

Kokaly et al., Remote Sensing of Environment, in press

Page 35: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

GreenGreenVegetationVegetation

Mineral/AshMineral/Ash

Mineral-1Mineral-1mm

Mineral-2Mineral-2mm

Dry ConiferDry Conifer

Dry & GreenDry & GreenConiferConifer

Straw mattingStraw matting

Ash/CharcoalAsh/Charcoal

Straw mattingStraw matting & Green grass& Green grass

Kokaly et al., Remote Sensing of Environment, in press

Page 36: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

High Burn SeverityHigh Burn Severity

Kokaly et al., Remote Sensing of Environment, in press

30m

Page 37: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Analysis of spectral shape (full spectrum and/or absorption features) for vegetation

characterization

• Multiple Endmember Spectral Mixture Models:– Roberts, et al. (1998) Remote Sens. Environ. 65:267–279

• Monte Carlo spectral unmixing model:– Asner and Heidebrecht (2002) Int. J. Remote sensing 23:

3939–3958

• Tetracorder, absorption feature analysis:– Clark, et al. (2003) . J. Geophys. Research 108 (E12): 5-1

to 5-44

Page 38: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Understanding ecosystem processes by quantifying canopy biochemistry

• Wessman, et al. (1988) Nature 333: 154–156• Asner and Heidebrecht (2003) IEEE Trans. on

Geoscience & Remote Sensing 41: 1283-1296.• Smith, et al. (2002) Ecological Applications 12:

1286–1302• Ollinger and Smith, (2005) Ecosystems 8: 760–778• Asner et al. (2005), Remote Sensing of Environment

96: 497–508

Page 39: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Asner and Heidebrecht, Int. J. remote sensing, 2002, vol. 23, no. 19, 3939–3958

Page 40: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Asner and Heidebrecht, IEEE Trans. on Geoscience & Remote Sensing (2003), 41:1283-1296.

Non-Photosynthetic Vegetation and Shrubland Ecosystems

Page 41: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Kokaly, REMOTE SENS. ENVIRON. 75:153–161 (2001)

Page 42: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Mutanga et al., Remote Sensing of Environment 96 (2005) 108– 118

Page 43: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

• V

Asner and Vitousek,

Proc. Nat. Acad. Sci.,

Vol 102 , 2005.

Page 44: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Smith et al., Ecological

Applications, 12(5), 2002,

1286–1302

Page 45: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Smith et al., Ecological

Applications, 12(5), 2002,

1286–1302

Page 46: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Ollinger and Smith,

Ecosystems (2005) 8: 760–778

Page 47: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Ollinger and Smith, Ecosystems

(2005) 8: 760–778

Page 48: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Ollinger and Smith,

Ecosystems (2005) 8: 760–778

Page 49: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary

Remaining Challenges/Future Directions

• Overlapping of biochemical absorption features– Leaf water masking effect– Understanding protein/lignin/cellulose changes which

all affect the 2.1 and 2.3 m features

• Quantification of other biochemicals (starch, tannin, hemi-cellulose, phosphorous)

• Independent-site/Multi-site validation• Atmospheric correction needs improvement to

lessen impact of residual features

Page 50: Characterizing non-pigment canopy biochemistry from imaging spectrometer data for studying ecosystem processes Gregory P. Asner, Gregory P. Asner, Mary