Advanced Signal Recognition Method for Path using FPGA

International Journal of VLSI & Signal Processing
© 2017 by SSRG - IJVSP Journal
Volume 4 Issue 3
Year of Publication : 2017
Authors : R.Belly Ballot, T.Anisley and N.Addison
pdf
How to Cite?

R.Belly Ballot, T.Anisley and N.Addison, "Advanced Signal Recognition Method for Path using FPGA," SSRG International Journal of VLSI & Signal Processing, vol. 4,  no. 3, pp. 26-30, 2017. Crossref, https://doi.org/10.14445/23942584/IJVSP-V4I5P106

Abstract:

In the recent emerging trends in the field of intelligent vehicle systems, Traffic sign recognition is engaged as a significantconstituent. Moreover, it deliberates the moderndevelopments in driver supporting technologies and highlights the securityinspirations for cleverimplanted systems. The signal recognition processes are enhanced by programmable hardware logic that examines the potential aspirants for symbol classification. Symbol recognition and arrangement uses a feature extraction and matching process, which is employed as a software constituent that tracks on the systems. This paper ensures a well-organized architecture of a concurrent traffic indication recognition system.

Keywords:

The structural design will demonstrates different attics through the simulation results in XILINX software.

References:

[1] M. Meuter, C. Nunn, S. M. Gormer, S. Mullerschneidersand A. A. Kummert, “A Decision fusion and reasoning Module for a Traffic Sign Recognition System,” IEEE Transactions on Intelligent Transportation Systems, Vol. 12, No. 4, 2011, pp. 1126-1134.
[2] A. Hechri et A. Mtibaa ; "Automatic Detection and Recognition of Road Sign for Driver Assistance System" , 16th IEEE Mediterranean Electro technical Conference, Medina Yasmine Hammamet Tunisia, 25-28 March 2012.
[3] De la Escalera, A.; Armingol, J.M.; Pastor, J.M.; Rodríguez, F.J. Visual sign information extraction and identification by deformable models for intelligent vehicles. IEEE Trans. Intell. Transp. 2004, 5, 57–68.
[4] Paclik, P., Novovicova, J., Pudil, P., Somol, P , " Road signs classification using the laplace kernel classifier", Pattern Recognition Letters 21(13-14), 1165–1173 (2000).
[5] Li, C.; Hu, Y.; Xiao, L.; Tian, L. Salient traffic sign recognition based on sparse representation of visual perception. In Proceedings of the 2012 International Conference on Computer Vision in Remote Sensing (CVRS), Xiamen, China, 16–18 December 2012; pp. 273– 278.
[6] E. Perez and B. Javidi. , "Nonlinear distortion-tolerant filters for detection of road signs in background noise",IEEE transaction on Vehicular Technology, 51(3) 567–576, May 2002.
[7] Wang, G. Ren, G. Wu, Z. Zhao, Y. Jiang, L. A robust, coarse-to-fine traffic sign detection method. In Proceedings of the 2011 International Joint Conference on Neural Networks (IJCNN), Dallas, TX, USA, 4–9 August 2013; pp. 1–5.
[8] Liu, Y.S., Duh, D.J., Chen, S.Y., Liu, R.S., Hsieh, J.W, "Scale and skew-invariant road sign recognition", International journal Imaging System Technologies 17((1), 28–39 (2007).
[9] Sermanet, P.; LeCun, Y. Traffic Sign Recognition with Multi-Scale Convolutional Networks, In Proceedings of the 2011 International Joint Conference on Neural Networks (IJCNN), San Jose, CA, USA, 31 July–5 August 2011; pp. 2809–2813.
[10] Park, J.; Kwon, J.; Oh, J.; Lee, S.; Yoo, H.-J A 92mW real-time traffic sign recognition system with robust light and dark adaptation, In Proceedings of the Solid State Circuits Conference (A-SSCC), 2011 IEEE Asian, Jeju, Korea, 14–16 Novermber 2011; pp. 397–400.
[11] Møgelmose, A.; Trivedi, M.M.; Moeslund, T.B. Vision- Based Traffic Sign Detection and Analysis for Intelligent Driver Assistance Systems: Perspectives and Survey. IEEE Trans. Intell. Transp. Syst. 2012, 13, 1484–1497.
[12] BARNES N. et.al. "Real-time radial symmetry for speed sign detection" Proc. IEEE Intelligent Vehicles Symp., Italy, June 2004, pp. 566-571
[13] Phalguni, P.; Ganapathi, K.; Madumbu, V.; Rajendran, R.; David, S. Design and implementation of an automatic traffic sign recognition system on TI OMAP-L138, In Proceedings of the 2013 IEEE International Conference on Industrial Technology (ICIT), Cape Town, South Africa, 25–28 February 2013; pp. 1104–1109.
[14] GARCIA-GARRIDO M.A. et. Al. "Fast traffic sign detection and recognition under changing lighting conditions". Proc. IEEE Conf. Intelligent Transportation Systems, 2006, pp. 811-816.
[15] Chen, Z.; Huang, X.; Ni, Z.; He, H A GPU-based real-time traffic sign detection and recognition system, In Proceedings of the 2014 IEEE Symposium on Computational Intelligence in Vehicles and Transportation Systems (CIVTS), Orlando, FL, USA, 9–12 December 2014; pp. 1–5.