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Two Models Representing World Features
Real World Features Raster Vector •
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The problem with raster representation of the real world
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Assumptions for SMA Landscape is composed of a few major components, called end members Spectral signatures of end members are constant within the scope of areas of interest
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Mathematical Solutions for SMA
Given n (j=1, …,n) end members and m (i=1, …,m) bands, fj is the fraction of end member j in a pixel with spectral signature Sij in band i, then How many bands do we need in order to solve for n end members?
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An SMA Example The simplest case: one band (NDVI image) two end members (Vegetation, Impervious Surface). NDVI=0.5 NDVIveg=0.7 NDVIis=-0.1 What is the fraction of vegetation cover within the pixel?
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Another Example of SMA Assuming we have three end members (Vegetation, Impervious Surface, and Water), can we still solve for vegetation cover with the following information?. NDVI=0.5 NDVIveg=0.7 NDVIis=-0.1 Why?
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Key information for SMA
Number of End Members Spectral Signature of End members
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How many end members? Land Cover Classes: IGBP 17 classes
Landsat TM 6 reflective bands Hyperspectral: Hundreds of bands
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Assumptions for SMA Landscape is composed of a few major components, called end members Spectral signatures of end members are constant within the scope of areas of interest
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Where do we get end member signatures?
Image end members (1) find the purest pixels (2) find the corner pixels in feature space NIR Red
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Where do we get end member signatures?
Reference End members End member spectral signatures obtained from a spectral library.
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Are End Member Signatures Constant?
Here is an example of Landsat image for the FACE site at Duke. There are tremendous variations in each endmember,such as vegetation
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How do we handle variable end member signatures?
End member bundles: Each end member spans a signature space. An end member is estimated as the mean of the minimum and maximum fractions. Assumption (s)? Multiple end members: Allows end member signature to vary from pixel to pixel. The end member signature is derived from a spectral library based on the goodness of fit. Other options NIR Red
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Bayesian SMA? Bayes Theorem: Convolution of Probabilities : NDVI=0.5
Pr(NDVIveg=0.7)=0.6 Pr(NDVIveg=0.6)=0.4 NDVIveg=0.7 NDVIurb=-0.1fv=, Pr=0.6*0.7=0.42 NDVIurb=-0.2fv=, Pr=0.6*0.3=0.18 NDVI=0.6 NDVIurb=-0.1fv=, Pr=0.4*0.7=0.28 NDVIurb=-0.2fv=, Pr=0.4*0.3=0.12 Pr(NDVIurb=-0.1)=0.7 Pr(NDVIurb=-0.2)=0.3
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What about more complicated Probilities?
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End member fractions
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