Compact Reconnaissance Imaging Spectrometer for Mars (CRISM) data can be used to identify the presence of minerals on the surface or Mars. The data are a peculiar set from which to extract endmembers. Using an image from a previously investigate area of the surface, we compare a geometrical and a statistical algorithm for extracting endmembers for mineral identification. Both algorithms correctly identified the spectra of the two minerals known to be present in the Nili Fossae region of Mars. Both algorithms suffer from linearity assumption. Even though the statistical algorithm is less robust with respect to outliers, it has potential to extract endmembers in complex data clouds because of its local nature.


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    Title :

    Spectral unmixing using nonnegative basis learning: comparison of geometrical and statistical endmember extraction algorithms


    Contributors:

    Conference:

    Space Exploration Technologies ; 2008 ; Orlando,Florida,United States


    Published in:

    Publication date :

    2008-04-15





    Type of media :

    Conference paper


    Type of material :

    Electronic Resource


    Language :

    English



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