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Journal of applied research and technology

versión On-line ISSN 2448-6736versión impresa ISSN 1665-6423

J. appl. res. technol vol.11 no.2 Ciudad de México abr. 2013

 

Adjacent Lane Detection and Lateral Vehicle Distance Measurement Using Vision-Based Neuro-Fuzzy Approaches

 

C. F. Wu1, C. J. Lin*2, H. Y. Lin2, H. Chung2

 

1 Department of Digital Content Application and Management Wenzao Ursuline College of Languages 900 Mintsu 1st Road Kaohsiung 807, Taiwan R.O.C.

2 Department of Computer Science and Information Engineering National Chin-Yi University of Technology No.57, Sec. 2, Zhongshan Rd., Taiping Dist., Taichung 41170, Taiwan R.O.C. *cjlin@ncut.edu.tw.

 

ABSTRACT

The aim of this article attempts to propose an advanced design of driver assistance system which can provide the driver advisable information about the adjacent lanes and approaching lateral vehicles. The experimental vehicle has a camera mounted at the left side rear view mirror which captures the images of adjacent lane. The detection of lane lines is implemented with methods based on image processing techniques. The candidates for lateral vehicle are explored with lane-based transformation, and each one is verified with the characteristics of its length, width, time duration, and height. Finally, the distances of lateral vehicles are estimated with the well-trained recurrent functional neuro-fuzzy network. The system is tested with nine video sequences captured when the vehicle is driving on Taiwan’s highway, and the experimental results show it works well for different road conditions and for multiple vehicles.

Keywords: Lane detection, distance measurement, neuro-fuzzy networks.

 

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