Classification of permafrost active layer depth from remotely sensed and topographic evidence
- Univ. of Ottawa, Ontario (Canada)
- Univ. of Calgary, Alberta (Canada)
The remote detection of permafrost (perennially frozen ground) has important implications to environmental resource development, engineering studies, natural hazard prediction, and climate change research. In this study, the authors present results from two experiments into the classification of permafrost active layer depth within the zone of discontinuous permafrost in northern Canada. A new software system based on evidential reasoning was implemented to permit the integrated classification of multisource data consisting of landcover, terrain aspect, and equivalent latitude, each of which possessed different formats, data types, or statistical properties that could not be handled by conventional classification algorithms available to this study. In the first experiment, four active layer depth classes were classified using ground based measurements of the three variables with an accuracy of 83% compared to in situ soil probe determination of permafrost active layer depth at over 500 field sites. This confirmed the environmental significance of the variables selected, and provided a baseline result to which a remote sensing classification could be compared. In the second experiment, evidence for each input variable was obtained from image processing of digital SPOT imagery and a photogrammetric digital elevation model, and used to classify active layer depth with an accuracy of 79%. These results suggest the classification of evidence from remotely sensed measures of spectral response and topography may provide suitable indicators of permafrost active layer depth.
- OSTI ID:
- 6593279
- Journal Information:
- Remote Sensing of Environment; (United States), Vol. 44:1; ISSN 0034-4257
- Country of Publication:
- United States
- Language:
- English
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Related Subjects
29 ENERGY PLANNING
POLICY AND ECONOMY
CANADA
PERMAFROST
REMOTE SENSING
ACCURACY
BASELINE ECOLOGY
CLIMATIC CHANGE
SATELLITES
TOPOGRAPHY
DEVELOPED COUNTRIES
ECOLOGY
NORTH AMERICA
540210* - Environment
Terrestrial- Basic Studies- (1990-)
290301 - Energy Planning & Policy- Environment
Health
& Safety- Regional & Global Environmental Aspects- (1992-)