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Original Articles

Coastal wetland vegetation classification with a Landsat Thematic Mapper image

, , , &
Pages 545-561 | Received 14 Apr 2008, Accepted 06 Aug 2009, Published online: 06 Feb 2011
 

Abstract

Coastal wetland vegetation classification with remotely sensed data has attracted increased attention but remains a challenge. This paper explored a hybrid approach on a Landsat Thematic Mapper (TM) image for classifying coastal wetland vegetation classes. Linear spectral mixture analysis was used to unmix the TM image into four fraction images, which were used for classifying major land covers with a thresholding technique. The spectral signatures of each land cover were extracted separately and then classified into clusters with the unsupervised classification method. Expert rules were finally used to modify the classified image. This research indicates that the hybrid approach employing sub-pixel information, an analyst's knowledge and characteristics of coastal wetland vegetation distribution shows promise in successfully distinguishing coastal vegetation classes, which are difficult to separate with a maximum likelihood classifier (MLC). The hybrid method provides significantly better classification results than MLC.

Acknowledgement

The authors would like to thank Shi-Chong, Hui Wang and Ke Dong for valuable assistance during the field work, and thank Scott Hetrick from Indiana University for correcting the English errors.

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