Vegetation indices and the red-edge index Jan Clevers Centre for Geo-Information (CGI) Quantitative Remote Sensing: The Classification Signatures: Spectral, Spatial, Temporal, Angular, and Polarization Statistical Methods Physical Methods Correlation relationships of land surface variables and remotely sensed data + Easy to develop, effective for summarizing local data - Models are site-specific, no cause-effect relationship Example: WDVI (Clevers, 1999), GEMI (Pinty and Verstraete, 1992) Inversion of [snow | canopy | soil] reflectance models + Follow a physical law, improvement through iteration - Long development curve, potentially complex Example: MODIS LAI (Myneni, 1999) Hybrid Methods Combination of Statistical and Physical Models Example: EO-1 ALI LAI (Liang, 2003) Source: Liang, S., 2004 Centre for Geo-information Vegetation Indices strengthening the spectral contribution of green vegetation minimizing disturbing influences of: soil background irradiance solar position yellow vegetation atmospheric attenuation mostly utilizing a red (R) and NIR spectral band Centre for Geo-information 0 0.2 0.4 NIR 1.0 0.8 0.6 Ratio-based Vegetation Indices NIR/R ratio (RVI) NDVI = (NIR-R)/(NIR+R) (Normalized Difference VI) NDVI 1 R 0 2à3 LAI Centre for Geo-information Orthogonal-based Vegetation Indices Perpendicular VI (PVI): NIR 1/(a2+1) (NIR – a × R) soil line Weighted Difference VI (PVI = 0) (WDVI): NIR – a × R Difference VI (DVI): NIR – R R a = slope soil line Centre for Geo-information Simplified reflectance model R = Rv × B + Rs × (1 – B) R : measured reflectance Rv : reflectance vegetation Rs : reflectance soil B : apparent soil cover Centre for Geo-information Calculate WDVI Red: R = Rv × B + Rs × (1 – B) NIR: NIR = NIRv × B + NIRs × (1 – B) Assume: a = NIRs / Rs (slope soil line) The NIR signal coming from the vegetation only can be approximated by the WDVI: WDVI = NIR – a × R Centre for Geo-information Hybrid Vegetation Indices Soil Adjusted VI (SAVI): NIR (1 + L) × (NIR – R)/(NIR +R + L) L = l1 + l2 0.5 R l2 l1 Broge & Leblanc, Remote Sens. Environ. 76 (2000): 156-172 Centre for Geo-information Enhanced Vegetation Index (EVI) for use with MODIS data NIR R EVI NIR C1 R C2 B L C1 = atmospheric resistance red correction coefficient [6.0] C2 = atmospheric resistance blue correction coefficient [7.5] L = canopy background brightness correction factor [1.0] http://tbrs.arizona.edu/project/MODIS/evi.php Centre for Geo-information Use of vegetation Indices Estimation of: Leaf Area Index (LAI) Vegetation cover Absorbed Photosynthetically Active Radiation (APAR) Chlorophyll or nitrogen content Canopy water content Biomass Carbon Structure of the canopy Centre for Geo-information Use of vegetation Indices Estimation of: Leaf Area Index (LAI) Vegetation cover Absorbed Photosynthetically Active Radiation (APAR) Chlorophyll or nitrogen content Canopy water content Biomass Carbon Structure of the canopy Centre for Geo-information Red Edge Index Determining vegetation condition using RS: e.g. blue shift of the red edge as a result of stress 1 2 reflectance (%) 60 healthy with stress 40 20 0 0.4 0.5 0.6 0.7 0.8 wavelength (µm) Centre for Geo-information Calculation REIP Red edge inflection point (REIP) = Red edge position (REP) = Maximum of the first derivative. R λ R λ 1 dR Δλ dλ λ is maximum. Centre for Geo-information PROSPECT – SAIL simulation 740 Red Edge Position (nm) 730 720 LAI = 0.5 LAI = 1.0 710 LAI = 2.0 LAI = 4.0 LAI = 8.0 700 690 680 0 10 20 30 40 50 60 70 80 -2 Chlorophyll Content (mg.cm ) Centre for Geo-information Soil background influence 740 Red Edge Position (nm) 730 720 LAI = 0.5 LAI = 1.0 LAI = 2.0 LAI = 4.0 LAI = 8.0 710 700 690 0 5 10 15 20 25 30 Soil Reflectance (% ) Centre for Geo-information Atmospheric influence 740 Red Edge Position (nm) 730 720 CHL = 5 CHL = 10 CHL = 20 CHL = 40 CHL = 80 710 700 690 0 10 20 30 40 50 60 70 80 90 100 Visibility (km) Centre for Geo-information Inverted Gaussian function R λ R s R s R o λ o λ 2 exp 2 2σ Rs = shoulder reflectance Ro = minimum reflectance o = wavelength at Ro = Gaussian shape parameter REP λ o σ Centre for Geo-information Linear interpolation method 60 50 Reflectance (%) 40 30 Rre 20 10 0 600 650 700 re 750 800 850 900 Wavelength (nm) Centre for Geo-information Linear interpolation method R 670 R 780 /2 R 700 REP 700 40 R 740 R 700 Centre for Geo-information REP image for MERIS Each digital number represents a wavelength value (being the REP) Centre for Geo-information Chlorophyll Index (CI) CIred_edge = (RNIR / Rred_edge) – 1 = (R780 nm / R710 nm) – 1 As estimator of chlorophyll content Gitelson et al., Geophysical Research Letters 33 (2006), 5 pp. http://www.calmit.unl.edu/people/gitelson/ Centre for Geo-information Photochemical Reflectance Index (PRI) PRI = (R531 nm – R570 nm) / (R531 nm + R570 nm) As estimator of photosynthetic activity Gamon et al., Remote Sensing of Environment 41 (1992), 35 – 44. Centre for Geo-information Use of vegetation Indices Estimation of: Leaf Area Index (LAI) Vegetation cover Absorbed Photosynthetically Active Radiation (APAR) Chlorophyll or nitrogen content Canopy water content Biomass Carbon Structure of the canopy Centre for Geo-information Estimating Canopy Water Content (CWC) ASD Fieldspec Pro 970nm nm 1200 970 1200nm nm 0.7 0.6 Reflectance 0.5 0.4 0.3 0.2 0.1 0 400 600 800 1000 1200 1400 1600 1800 2000 2200 2400 Wavelength (nm) Centre for Geo-information Estimators for Canopy Water Content Reflectances Continuum removal: MBD, AUC, ANMB Water band indices: WI, NDWI WI = R900/R970 NDWI = (R860 – R1240) / (R860 + R1240) Derivatives Centre for Geo-information Results: PROSPECT-SAILH simulation CWC 40 Canopy water content (ton/ha) 35 30 25 20 y = -202.24x + 0.0437 2 R = 0.9849 15 10 5 0 -0.2 -0.15 -0.1 -0.05 0 Derivative @ 942.5 nm Centre for Geo-information Results: Millingerwaard 2004 - FieldSpec 30 12 10 20 y = -155.2x + 4.0005 2 R = 0.7211 8 15 6 10 Dry weight (ton/ha) Canopy water content (ton/ha) 25 4 5 2 0 -0.15 0 -0.13 -0.11 -0.09 -0.07 -0.05 -0.03 -0.01 Derivative @ 936.5 nm Centre for Geo-information Summary PROSPECTSAILH FieldSpec 2004 HyMap 2004 FieldSpec 2005 AHS 2005 Derivative Left slope 0.98 @ 942.5 nm 0.72 @ 936.5 nm 0.50 @ 936 nm 0.55 @ 936.5 nm 0.56 @ 933 nm Derivative Right slope 0.93 @1032.5 nm 0.34 @1031.5 nm 0.45 @ 1030 nm 0.43 @1031.5 nm -- WI 0.94 0.37 0.38 0.40 0.41 NDWI 0.86 0.50 0.25 0.36 -- Centre for Geo-information Continuum removal (1) Use Continuum Removal to normalize reflectance spectra to allow comparison of individual absorption features from a common baseline. The continuum is a convex hull fit over the top of a spectrum utilizing straight line segments that connect local spectra maxima. The first and last spectral data values are on the hull and therefore the first and last bands in the output continuum-removed data file are equal to 1.0. Convex hull (Source: ENVI online help) Centre for Geo-information Continuum removal (2) http://speclab.cr.usgs.gov/PAPERS.refl-mrs/ Centre for Geo-information Continuum removal (3) Centre for Geo-information Continuum removal (3) MBD = Maximum Band Depth Centre for Geo-information Continuum removal (3) AUC = Area Under Curve ANMB = Area Normalized by the Maximum Band depth Centre for Geo-information Spectral unmixing Spectral unmixing aims at finding the fractions or abundances of end-members, which are spectrally pure by deconvolving them from a mixed spectrum A single pixel with three materials A, B and C Material IFOV of pixel Fraction A 0.25 B 0.25 C 0.50 A Each endmember has a unique spectrum B C Reflectance spectra The mixed spectrum is just a weighted average mix=0.25*A+0.25*B+0.5*C Centre for Geo-information Mathematics of linear unmixing n Ri f j Re ij i j 1 Ri = reflectance of the mixed spectrum of a pixel in image band i j = fraction of end-member j Reij = reflectance of the end-member spectrum j in band i i = the residual error n = number of end-members n Constraining assumptions: f j 1 and 0 f j 1 j 1 Centre for Geo-information Spectral unmixing at Cuprite Alunite Calcite Kaolinite Silica Zeolite RMS image Geologic map from unmixing Centre for Geo-information Problems with unmixing How to select the end members? Do these describe the data spectrally? Are these of interest? Is mixing a linear process? Spectrometer Incident solar irradiance Spectral unmixing Heterogeneous IFOV for a single pixel Centre for Geo-information Spectral field measurements Centre for Geo-information Questions ? www.scopus.com/home.url www.isiknowledge.com © Wageningen UR
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