MULTISCALE IMAGE SEGMENTATION USING A HIERARCHICAL SELF-ORGANIZING MAP

Citation
Sm. Bhandarkar et al., MULTISCALE IMAGE SEGMENTATION USING A HIERARCHICAL SELF-ORGANIZING MAP, Neurocomputing, 14(3), 1997, pp. 241-272
Citations number
30
Categorie Soggetti
Computer Sciences, Special Topics","Computer Science Artificial Intelligence",Neurosciences
Journal title
ISSN journal
09252312
Volume
14
Issue
3
Year of publication
1997
Pages
241 - 272
Database
ISI
SICI code
0925-2312(1997)14:3<241:MISUAH>2.0.ZU;2-2
Abstract
Multiscale structures and algorithms that unify the treatment of local and global scene information are of particular importance in image se gmentation. Vector quantization, owing to its versatility, has proved to be an effective means of image segmentation. Although vector quanti zation can be achieved using self-organizing maps with competitive lea rning, self-organizing maps in their original single-layer structure, are inadequate for image segmentation. PI hierarchical self-organizing neural network for image segmentation is presented. The Hierarchical Self-Organizing Map (HSOM) is an extension of the conventional (single -layer) Self-Organizing Map (SOM). The problem of image segmentation i s formulated as one of vector quantization and mapped onto the HSOM. B y combining the concepts of self-organization and topographic mapping with those of multiscale image segmentation the HSOM alleviates the sh ortcomings of the conventional SOM in the context of image segmentatio n.