Drawing Understanding System Incorporating Rule Generation Support with Man-Machine Interactions (Special Issue on Document Analysis and Recognition)
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概要
- 論文の詳細を見る
The present study describes using the state transition type of drawing understanding framework to construct a multi-purpose drawing understanding system. This new system employs an understanding process that complies with the understanding rules, which are easily obtained by the user. The same set of user-provided rules must be used for the same type of target drawings, but for slightly different ones, fine tuning is required to obtain understanding rules. To overcome this inherent drawback in constructing drawing understanding systems, we extended the system using a newly constructed understanding rule generating support system. The resultant integrated system is based on a man-machine cooperation type interface, and can automatically generate rules from user-provided simple interactions using a graphical user interface (GUI). To obtain efficient rule generation, the system employs an inductive inference method as a learning algorithm. Map-drawing experiments were successfully carried out, and an evaluation based on a rule learning error criterion subsequently revealed an efficient rule generation process.
- 社団法人電子情報通信学会の論文
- 1994-07-25
著者
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Sakauchi M
Univ. Tokyo Tokyo Jpn
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Sakauchi Masao
Institurte Of Industrial Science The University Of Tokyo
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Satoh Shin'ichi
National Center For Science Information Systems
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Mo Hiroshi
Institute Of Industrial Science The University Of Tokyo
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