DocumentCode :
1565211
Title :
Learning regular grammars on connection architectures
Author :
Smith, Kurt R. ; Miller, Michael I.
Author_Institution :
Washington Univ., St. Louis, MO, USA
fYear :
1989
Firstpage :
2501
Abstract :
The authors present results on learning regular grammars as well as developing extensions to learning multidimensional random fields. In learning a regular grammar, they use recent results on the stochastic representation of strongly connected regular grammars in order to derive an algorithm based on mutual information for learning the minimal state set as well as the production rules of the grammar. These learning results are then extended to multiple dimensions by extending the state structure of the regular grammar to the neighborhood structure of multidimensional random fields. This allows the authors to learn textures for image segmentation and reconstruction. The implementation of the learning algorithms on connection architectures is described
Keywords :
grammars; learning systems; neural nets; algorithm; connection architectures; image segmentation; learning; minimal state set; multidimensional random fields; mutual information; neighborhood structure; production rules; reconstruction; state structure; stochastic representation; strongly connected regular grammars; textures; Biomedical computing; Computer architecture; Entropy; Image segmentation; Laboratories; Multidimensional systems; Mutual information; Production; Random variables; Stochastic processes;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech, and Signal Processing, 1989. ICASSP-89., 1989 International Conference on
Conference_Location :
Glasgow
ISSN :
1520-6149
Type :
conf
DOI :
10.1109/ICASSP.1989.266975
Filename :
266975
Link To Document :
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