International Journal of Engineering and Management Research (IJEMR)
  • Year: 2017
  • Volume: 7
  • Issue: 4

Traffic Sign Recognition for Autonomous Driving Robot

  • Author:
  • K. Pavani, A. Prasanna Lakshmi
  • Total Page Count: 8
  • Page Number: 385 to 392

Assistant Professor, ECE, VJIT, Hyderabad, India

Online published on 31 October, 2017.

Abstract

We introduce a new computer vision based system for robust traffic sign recognition and tracking. Such a system presents a vital support for driver assistance in an intelligent automotive. Firstly, a color based segmentation method is applied to generate traffic sign candidate regions. Secondly, the HoG features are extracted to encode the detected traffic signs and then generating the feature vector. This vector is used as an input to an SVM classifier to identify the traffic sign class. Finally, a tracking method based on optical flow is performed to ensure a continuous capture of the recognized traffic sign while accelerating the execution time. Our method affords high precision rates under different challenging conditions.

Keywords

HoG, SVM, computer vision