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An automated land-use mapping comparison of the Bayesian maximum likelihood and linear discriminant analysis algorithmsThe Bayesian maximum likelihood parametric classifier has been tested against the data-based formulation designated 'linear discrimination analysis', using the 'GLIKE' decision and "CLASSIFY' classification algorithms in the Landsat Mapping System. Identical supervised training sets, USGS land use/land cover classes, and various combinations of Landsat image and ancilliary geodata variables, were used to compare the algorithms' thematic mapping accuracy on a single-date summer subscene, with a cellularized USGS land use map of the same time frame furnishing the ground truth reference. CLASSIFY, which accepts a priori class probabilities, is found to be more accurate than GLIKE, which assumes equal class occurrences, for all three mapping variable sets and both levels of detail. These results may be generalized to direct accuracy, time, cost, and flexibility advantages of linear discriminant analysis over Bayesian methods.
Document ID
19840041536
Acquisition Source
Legacy CDMS
Document Type
Reprint (Version printed in journal)
Authors
Tom, C. H.
(ConTel Information Systems, Inc. Government Systems Div., Littleton, CO, United States)
Miller, L. D.
(Nebraska, University Lincoln, NE, United States)
Date Acquired
August 12, 2013
Publication Date
February 1, 1984
Publication Information
Publication: Photogrammetric Engineering and Remote Sensing
Volume: 50
ISSN: 0099-1112
Subject Category
Earth Resources And Remote Sensing
Accession Number
84A24323
Distribution Limits
Public
Copyright
Other

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