Publication Date:
2019-07-13
Description:
The utilization of minimum distance classification methods in remote sensing problems, such as crop species identification, is considered. Literature concerning both minimum distance classification problems and distance measures is reviewed. Experimental results are presented for several examples. The objective of these examples is to: (a) compare the sample classification accuracy of a minimum distance classifier, with the vector classification accuracy of a maximum likelihood classifier, and (b) compare the accuracy of a parametric minimum distance classifier with that of a nonparametric one. Results show the minimum distance classifier performance is 5% to 10% better than that of the maximum likelihood classifier. The nonparametric classifier is only slightly better than the parametric version.
Keywords:
INSTRUMENTATION AND PHOTOGRAPHY
Type:
NASA-CR-130030
,
LARS-PRINT-030772
,
Can. Symp. for Remote Sensing; Feb 07, 1972 - Feb 09, 1972; Ottawa; Cananda
Format:
application/pdf
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