INTELLIGENT MACHINE VISION SYSTEM FOR ROAD TRAFFIC SIGN RECOGNITION

Aryuanto, Aryuanto and Koichi, Yamada and F. Yudi, Limpraptono (2008) INTELLIGENT MACHINE VISION SYSTEM FOR ROAD TRAFFIC SIGN RECOGNITION. In: Prosiding Seminar Nasional Teknoin 2008 Bidang Teknik Elektro, 22 November 2008, Yogyakarta.

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Abstract

We proposed an intelligent machine vision system to recognize traffic signs captured from a video camera installed in a vehicle. By recognizing the traffic signs automatically, it helps the driver to recognize the signs properly when drivig, to avoid accidents caused by mis-recognized the traffic signs.The system is divided into two stages : detection stage to localize signs from a whole image, and classification stage that classifies the detected sign into one of the reference signs. A geometric fragmentation technique, a method somewhat similar to Genetic Algorithm (GA) is employed to detect circular sign. Then a ring partitioned method that divides an image into several ring-shaped areas is used to classify the signs. From the experimental results, the proposed techniques are able to recognize traffic sign images under the problems of illumination changes, rotation, and occlusion efficiently.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: We proposed an intelligent machine vision system to recognize traffic signs captured from a video camera installed in a vehicle. By recognizing the traffic signs automatically, it helps the driver to recognize the signs properly when drivig, to avoid accidents caused by mis-recognized the traffic signs.The system is divided into two stages : detection stage to localize signs from a whole image, and classification stage that classifies the detected sign into one of the reference signs. A geometric fragmentation technique, a method somewhat similar to Genetic Algorithm (GA) is employed to detect circular sign. Then a ring partitioned method that divides an image into several ring-shaped areas is used to classify the signs. From the experimental results, the proposed techniques are able to recognize traffic sign images under the problems of illumination changes, rotation, and occlusion efficiently.
Subjects: Engineering > Electrical Engineering
Library Of Science
Divisions: Fakultas Teknologi Industri > Teknik Elektro S1
Depositing User: Mr Sayekti Aditya Endra
Date Deposited: 30 Aug 2024 03:23
Last Modified: 30 Aug 2024 03:23
URI: http://eprints.itn.ac.id/id/eprint/14921

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