Night-Time Traffic Light Detection Based On SVM with Geometric Moment Features
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32797
Night-Time Traffic Light Detection Based On SVM with Geometric Moment Features

Authors: Hyun-Koo Kim, Young-Nam Shin, Sa-gong Kuk, Ju H. Park, Ho-Youl Jung

Abstract:

This paper presents an effective traffic lights detection method at the night-time. First, candidate blobs of traffic lights are extracted from RGB color image. Input image is represented on the dominant color domain by using color transform proposed by Ruta, then red and green color dominant regions are selected as candidates. After candidate blob selection, we carry out shape filter for noise reduction using information of blobs such as length, area, area of boundary box, etc. A multi-class classifier based on SVM (Support Vector Machine) applies into the candidates. Three kinds of features are used. We use basic features such as blob width, height, center coordinate, area, area of blob. Bright based stochastic features are also used. In particular, geometric based moment-s values between candidate region and adjacent region are proposed and used to improve the detection performance. The proposed system is implemented on Intel Core CPU with 2.80 GHz and 4 GB RAM and tested with the urban and rural road videos. Through the test, we show that the proposed method using PF, BMF, and GMF reaches up to 93 % of detection rate with computation time of in average 15 ms/frame.

Keywords: Night-time traffic light detection, multi-class classification, driving assistance system.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1071836

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 3819

References:


[1] Zehang Sun, "On-Road Vehicle Detection: A Review", IEEE Transation on pattern analysis and machine intelligence, Vol. 28, No. 5, pp 694-711, 2006.
[2] M. Omachi, S. Omachi, "Traffic Light Detection with Color and Edge Information", 2nd IEEE ICCSIT'2009, pp. 28-287.
[3] J. H. Park, and C. S. Jeong, "Real-time Signal Light Detection", International Journal of Signal Processing and Pattern Recognition, 2009, 2 (2), pp.1-10.
[4] Y. C. Chung, J. M. Wang , and S. W. Chen, "A Vision-Based Traffic Light Detection System At Intersections", Journal of Taiwan Normal University: Mathematics, Science & Technology, 2002, 47(1), pp. 67-86.
[5] Moises Diaz-Cabrera, Pietro Cerri and Javier Sanchez-Medina, "Suspended Traffic Lights Detection and Distance Estimation Using Color Features", 15th IEEE ITS'2012, pp. 1315-1320.
[6] Zixing Cai, Yi Li, Mingqin Gu, "Real-time Recognition System of Traffic Light in Urban Environment", 2012 IEEE Symposium on CISDA, pp. 1-6.
[7] Raoul de Charette, Fawzi Nashashibi, "Real Time Visual Traffic Lights Recognition Based on Spot Light Detection and Adaptive Traffic Lights Templates", 2009 IEEE Intelligent Vehicles Symposium, pp. 358-363.
[8] Raoul de Charette, Fawzi Nashashibi, "Traffic light recognition using image processing compared to learning processes", IEEE/RSJ International Conference on Intelligent Robots and Systems, 2009, pp. 333-338.
[9] A Ruta, Y Li, X Liu, "Real-time traffic sign recognition from video by class-specific discriminative features", Pattern Recognition, vol. 43, pp. 416-430, 2010.
[10] Hyun-Koo Kim, Ho-Youl Jung, and Ju H. Park, "Vehicle Detection for Adaptive Head-Lamp Control of Night Vision System", Journal of Institute of Embedded Engineering of Korea (IEMEK), Vol. 6, No. 1, pp. 8-15, 2011. 02.
[11] Burges, Christopher J. C., "A Tutorial on Support Vector Machines for Pattern Recognition", Data Mining and Knowledge Discovery 2:121-167, 1998.
[12] P. Viola and M. Jones, "Rapid Object Detection using a Boosted Cascade of Simple Features", IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR-2001), Volume 1, page 511, Kauai , Hawaii, USA, 2001.
[13] M. K. Hu, "Visual Pattern Recognition by Moment Invariants", IRE Trans. Info. Theory, vol. IT-8, pp.179.187, 1962.