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Feature Identification Exercises
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Summary

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The MODIS Feature Identification Exercises training module has demonstrated an effective daytime use for multispectral MODIS imagery in the identification of clouds over snow and ice cover through four mini-exercises. NOAA-16, -17 and EOS polar satellites, Terra and Aqua are demonstrating a set of multispectral imaging capabilities for land, ocean, and atmosphere applications that foreshadow major advances in remote sensing during the coming decade. Familiarization and practice with data from this group of satellites will help forecasters prepare for the new suite of multi-spectral sensing tools becoming available with NPOESS and METOP satellites over the course of the next several years.

The following is a summary of clouds over snow and ice detection strategies as covered in this module:

· 1.6-micrometer channel imagery is best for distinguishing most cloud types, except for
  very thin cirrus (3.9 and 11-micrometer channels improve the detection of thin cirrus)

· In the 1.6-micrometer channel, clouds appear brighter and are easily separated from
  the darker less reflective underlying snow and ice cover

· In the absence of a 1.6-micrometer channel, the 3.9-micrometer channel is an effective
  detection tool for identifying low water clouds

· Visible and 1.6-micrometer imagery is an effective combination in the detection of
  clouds   for complex scenes containing a mixture of clouds, snow, bare ground, and forest

· Cloud type can be assessed with a combination of shortwave and longwave infrared
  imagery
   -3.9-micrometer imagery is useful for determining cloud phase
    (water droplets appear warm/reflective)
  - cloud height can be inferred from 11-micrometer cloud-top brightness temperatures
    (in combination with the 1.6 or 3.9-micrometer imagery, can help detect the presence
    of super-cooled water clouds)

· The visible and 1.6-micrometer channels are an effective combination in separating
   ice from open water
   - Open water is poorly reflective/dark compared with and other surfaces types in
    these two channels

· For cold scenes, 3.9- and 11-micrometer imagery can help with then detect of
  relatively warm surface water associated with open rivers and lakes

· Both 1.6- and 3.9-micrometer imagery can help to confirm the presence of
  snow cover within forested regions

· Imagery that combines the visible, 1.6- (or 3.9-) and 11-micrometer channels to create
  false-color composites, is a technique that can be employed to highlight the strengths
  of each channel in a single image product

· Multi-channel compositing can help the analyst reduce the time currently needed for
  examining individual channel image products while increasing the likelihood of detection
  for specific features

· Channel compositing techniques that focus on specific meteorological features will become
  increasingly important as the number of available spectral channels continues to increase

· The range of detectable features and the accuracy with which they are characterized will
  continue to improve as the number and resolution of available spectral channels increase


Go to Case Example 1: Manitoba
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