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Remote Sensing Letters

On unsupervised segmentation of remotely sensed imagery using nonlinear regression

Pages 1407-1415 | Received 05 Sep 1995, Accepted 01 Dec 1995, Published online: 27 Apr 2007
 

Abstract

A novel segmentation technique for remotely sensed imagery is introduced. Here, image segmentation is posed as a regression problem. The solution is computed by generating a piecewise constant image with minimum deviation from the original input image. The regression technique avoids the problems of region merging, poor boundary localization, region boundary ambiguity, region fragmentation, and sensitivity to noise. Results generated from the nonlinear regression technique and from other traditional segmentation algorithms are given for a study of the Great Victoria Desert using Landsat Thematic Mapper (TM) imagery.

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