A new vehicle classification method using fuzzy logic for loop/piezo sensor-based systems.

Author(s)
Kim-S, W. Kim, K. Lee-J, H. & Cho-D, I.
Year
Abstract

Individual vehicle information, especially vehicle classification data, play a key role in Advanced Traffic Management and Information Systems (ATMIS). In inductive loop and piezoelectric sensor-based systems, traffic data such as the vehicle length and the distance between axles are used for vehicle classification. However, classification errors often occur in distinguishing passenger cars from small trucks and in distinguishing medium-sized trucks from small trucks. It is mainly attributed to the fact that they are similar in lengths and have similar inter-axle distances. To improve the performance in vehicle classification, a new vehicle classification algorithm using a fuzzy logic was developed. Vehicle weight and speed are used as the inputs to the fuzzy logic block. The output of the fuzzy logic block is a weighting factor to modify the calculated vehicle length. Experimental results show that the developed algorithm significantly improves the classification performance. For the covering abstract see ITRD E114174.

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Publication

Library number
C 24444 (In: C 22454 CD-ROM) /72 /73 / ITRD E115577
Source

In: From vision to reality : proceedings of the 7th World Congress on Intelligent Transportation Systems ITS, Turin, Italy, 6-9 November 2000, 8 p., 15 ref.

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