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Geostatistical and texture analysis of airborne-acquired images used in forest classification

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Airborne sensor image texture derived following a geostatistical analysis can increase the accuracy of forest classification because the resulting texture is insensitive to random variations in spectral response but related to the structural features of interest at the scale of a forest inventory (e.g. tree species). The combination of spectral and textural data derived from a kriging surface provided 86% classification accuracy in 36 pure and mixed-wood stands in seven forest classes in Alberta. This is an increase over the classification accuracy obtained when texture was derived from the original image data, and when the spectral response patterns were used alone.

Document Type: Research Article

Affiliations: 1: Department of Geography University of Calgary Calgary, Alberta, T2N 1N4 Canada, Email: [email protected] 2: University of Saskatchewan, Box 5000 RPO University 110 Gymnasium Place Saskatoon Saskatchewan S7N 4J8 Canada, Email: [email protected] 3: Canadian Forest Service, Pacific Forestry Centre Natural Resources Canada Victoria British Columbia, V8Z 1M5 Canada, Email: [email protected]

Publication date: 01 February 2004

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