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Knowledge-Based configuration of image segmentation processes

✍ Scribed by C.-E. Liedtke; A. Blömer; Th. Gahm


Publisher
John Wiley and Sons
Year
1990
Tongue
English
Weight
1013 KB
Volume
2
Category
Article
ISSN
0899-9457

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✦ Synopsis


The solution of an image interpretation problem using digital image analysis methods requires the configuration of an image analysis system to meet the requirements of this specific task and the specific data material. This process includes the selection of the appropriate sequence of operators and the adaptation of the free parameters. A system has been developed and is described, which performs this configuration process automatically on the basis of a user-specified task definition, and general knowledge of an image analysis expert.

The latter knowledge has been assessed, stored. and used by employing different paradigms of knowledge representation similar to expert systems.


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