Traffic Sign Detection and Recognition Model Using Support Vector Machine and Histogram of Oriented Gradient
Автор: Nabil Ahmed, Sifat Rabbi, Tazmilur Rahman, Rubel Mia, Masudur Rahman
Журнал: International Journal of Information Technology and Computer Science @ijitcs
Статья в выпуске: 3 Vol. 13, 2021 года.
Бесплатный доступ
Traffic signs are symbols erected on the sides of roads that convey the road instructions to its users. These signs are essential in conveying the instructions related to the movement of traffic in the streets. Automation of driving is essential for efficient navigation free of human errors, which could otherwise lead to accidents and disorganized movement of vehicles in the streets. Traffic sign detection systems provide an important contribution to automation of driving, by helping in efficient navigation through relaying traffic sign instructions to the system users. However, most of the existing techniques have proposed approaches that are mostly capable of detection through static images only. Moreover, to the best of the author’s knowledge, there exists no approach that uses video frames. Therefore, this article proposes a unique automated approach for detection and recognition of Bangladeshi traffic signs from the video frames using Support Vector Machine and Histogram of Oriented Gradient. This system would be immensely useful in the implementation of automated driving systems in Bangladeshi streets. By detecting and recognizing the traffic signs in the streets, the automated driving systems in Bangladesh will be able to effectively navigate the streets. This approach classifies the Bangladeshi traffic signs using Support Vector Machine classifier on the basis of Histogram of Oriented Gradient property. Through image processing techniques such as binarization, contour detection and identifying similarity to circle etc., this article also proposes the actual detection mechanism of traffic signs from the video frames. The proposed approach detects and recognizes traffic signs with 100% precision, 95.83% recall and 96.15% accuracy after running it on 78 Bangladeshi traffic sign videos, which comprise 6 different kinds of Bangladeshi traffic signs. In addition, a public dataset for Bangladeshi traffic signs has been created that can be used for other research purposes.
Traffic Sign, Detection, Recognition, Support Vector Machine, Histogram of Oriented Gradient
Короткий адрес: https://sciup.org/15017763
IDR: 15017763 | DOI: 10.5815/ijitcs.2021.03.05
Список литературы Traffic Sign Detection and Recognition Model Using Support Vector Machine and Histogram of Oriented Gradient
- A. de la Escalera and M. A. Salichs, “Road traffic sign detection and classification,” IEEE Transactions On Industrial Electronics, vol. 44, no. 6, 1997
- “Convention on Road Signs and Signals”, Vienna, 1968.
- S. Chakraborty and K. Deb, “Bangladeshi road sign detection based on YCbCr color model and DtBs vector,” 1st International Conference on Computer and Information Engineering, 2015.
- https://en.wikipedia.org/wiki/YCbCr [Last Accessed: 10 February, 2020]
- J. D. Zhao, Z. M. Bai, and H. B. Chen, “Research on road traffic sign recognition based on video image,” 10th International Conference on Intelligent Computation Technology and Automation, 2017.
- S. Ardianto, C.-J. Chen, and H.-M. Hang, “Real-time traffic sign recognition using color segmentation and svm,” International Conference on Systems, Signals and Image Processing (IWSSIP), 2017.
- C. Rahmad, I. F. Rahmah, R. A. Asmara, and S. Adhisuwignjo, “Indonesian traffic sign detection and recognition using color and texture feature extraction and svm classifier,” International Conference on Information and Communications Technology (ICOIACT), 2018.
- E. A. Roxas, J. N. Acilo, R. R. P. Vicerra, E. P. Dadios, and A. A. Bandala, “Vision based traffic sign compliance evaluation using convolutional neural network,” IEEE International Conference on Applied System Innovation, 2018.
- W. Canyong, “Research and application of traffic sign detection and recognition based on deep learning,” International Conference on Robots and Intelligent Systems, 2018.
- Y. Jia, “Caffe: Convolutional architecture for fast feature embedding,” 2018.
- P. Jingzhang, “A study on convolutional neural networks for traffic sign recognition,” 2017.
- S. Houben, “Detection of traffic signs in real-world images: the german traffic sign detection benchmark,” International Joint Conference on Neural Networks IEEE, 2013.
- S. Guangming, “Visualization and pruning of ssd with the base network vgg-16,” International Conference on Deep Learning Technologies ACM, 2017.
- L. Wei, “Ssd: Single shot multibox detector,” 2015.
- https://github.com/Tazmilur20/Bangladeshi-traffic-sign-dataset [Last Accessed: 7 August, 2020]
- https://www.jetbrains.com/pycharm/ [Last Accessed: 7 August, 2020]
- https://www.opencv.org/ [Last Accessed: 7 August, 2020]
- https://www.numpy.org/ [Last Accessed: 7 August, 2020]
- Dip Nandi, A.F.M. Saifuddin Saif, Prottoy Paul, Kazi Md. Zubair, Seemanta Ahmed Shubho, " Traffic Sign Detection based on Color Segmentation of Obscure Image Candidates: A Comprehensive Study", International Journal of Modern Education and Computer Science(IJMECS), Vol.10, No.6, pp. 35-46, 2018.DOI: 10.5815/ijmecs.2018.06.05
- http://benchmark.ini.rub.de/[Last Accessed: 7 August, 2020]
- S. S. Gornale, A. K. Babaleshwar, P. L. Yannawar, “Detection and Classification of Signage’s from Random Mobile Videos Using Local Binary Patterns”, International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.10, No.2, pp.52-59, 2018.DOI: 10.5815/ijigsp.2018.02.06
- D.M. Filatov, K.V. Ignatiev, E. V. Serykh, “Neural Network System of Traffic Signs Recognition”, 2017 XX IEEE International Conference on Soft Computing and Measurements (SCM), 24-26 May 2017
- A. Sugiharto, A. Harjoko, “Traffic sign detection based on HOG and PHOG using binary SVM and k-NN”, 2016 3rd International Conference on Information Technology, Computer, and Electrical Engineering (ICITACEE), 19-20 Oct. 2016
- Priyanka Desai, G. R. Kulkarni, "Use of API’s for Comparison of Different Product Information under one Roof: Analysis Using SVM", International Journal of Information Technology and Computer Science(IJITCS), Vol.10, No.6, pp.11-22, 2018. DOI: 10.5815/ijitcs.2018.06.02
- Abbas Hanon. Alasadi, Baidaa M.ALsafy,"Early Detection and Classification of Melanoma Skin Cancer", International Journal of Information Technology and Computer Science(IJITCS), vol.7, no.12, pp.67-74, 2015. DOI: 10.5815/ijitcs.2015.12.08