• DocumentCode
    1302084
  • Title

    On the errors of two estimators of sub-pixel fractional cover when mixing is linear

  • Author

    Settle, Jeff ; Campbell, Norm

  • Author_Institution
    Environ. Syst. Sci. Centre, Reading Univ., UK
  • Volume
    36
  • Issue
    1
  • fYear
    1998
  • fDate
    1/1/1998 12:00:00 AM
  • Firstpage
    163
  • Lastpage
    170
  • Abstract
    The authors consider the problem of estimating ground cover at sub-pixel scales from remotely sensed imagery. In particular, they examine two strategies that make use of a set of reference pixels, or training pixels, for which fractional ground cover is already known. These strategies are the so-called classical and inverse methods. The former proceeds by assuming that signals received at a sensor are area-weighted averages of characteristic signals for each ground cover component, estimates those characteristic signals from the training pixels, and predicts fractions for a general pixel to be those that give the best match of the modeled and observed image signals. The latter approach proceeds by direct multivariate regression of ground cover proportions on pixel spectral values. The authors show that when ground cover types are spectrally well separated, and mixing is indeed linear, the difference between the two estimators is much smaller than the prediction error associated with either. This means that it is perfectly acceptable to use standard methods of multivariate regression to perform spectral unmixing. They also show that the inverse estimator can be regarded as a regularized form of the classical estimator and that the supposed optimality of the inverse method may be compromised if the training dataset is not a random subset of the complete set of image pixels
  • Keywords
    geophysical signal processing; geophysical techniques; image colour analysis; remote sensing; classical method; errors; estimator; geophysical measurement technique; inverse estimator; inverse method; land surface; linear mixing; multidimensional image processing; multidimensional signal processing; multispectral remote sensing; multivariate regression; optical imaging; pectral unmixing; reference pixels; sub-pixel fractional cover; sub-pixel scale; terrain mapping; training pixels; vegetation mapping; Calibration; Data mining; Image sensors; Inverse problems; Multivariate regression; Pixel; Predictive models; Remote sensing; Sensor phenomena and characterization; Vegetation mapping;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/36.655326
  • Filename
    655326