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Physically based inversion modeling for...
Journal article

Physically based inversion modeling for unsupervised cluster labeling, independent forest classification, and LAI estimation using MFM-5-Scale

Abstract

Unsupervised clustering is important for regional- to national-scale forest inventories where supervised training data are impractical or unavailable. However, labeling clusters in terms of land-cover classes can be labour intensive and problematic, and clustering and related methods do not provide biophysical-structural information (BSI). Canopy reflectance models such as 5-Scale are powerful forest remote sensing tools; however, 5-Scale can …

Authors

Peddle DR; Johnson RL; Cihlar J; Leblanc SG; Chen JM; Hall FG

Journal

Canadian Journal of Remote Sensing, Vol. 33, No. 3, pp. 214–225

Publisher

Taylor & Francis

Publication Date

January 2007

DOI

10.5589/m07-026

ISSN

0703-8992