An AFC System of Digital Scenic Areas Based on Decision Tree Classification

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Abstract:

Ticket gate system was one of the key parts of AFC system of digital scenic areas. In order to raise the passing rate of ticket gate system, one kind of access rules based on decision tree classification was provided in this paper. According to the access rules, ticket gate system was divided into 4 areas and each area was equipped with 4 opposite-type laser photoelectric sensors. The system obtained sensors statuses and judged areas statuses using decision tree classification when an object passing the walkway. A comprehensive control command which could drive other apparatus such as voice prompt module and the LCD was given by the system. Structure and hardware of ticket gate system were also provided. Two experiments were conducted for testing the passing rate of the ticket gate system. The results prove that the access rules are effective.

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Periodical:

Advanced Materials Research (Volumes 734-737)

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2907-2911

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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