The textured nature of most natural land cover units as represented in remotely sensed imagery causes limited results of per-pixel classifications. The segmentation algorithm, iterative mutually optimum region merging (IMORM), is presented and used to partition images into elements that are thereafter classified by linear canonical discriminant analysis and a maximum likelihood allocation rule. This per-segment approach results in much higher accuracy than the conventional per-pixel approach. Furthermore, separability matrices indicate that many land cover categories cannot be correctly defined by per-pixel statistics
Published in:
Geoscience and Remote Sensing, IEEE Transactions on
(Volume:35
,
Issue:
5
)
Date of Publication: Sep 1997