Detection and Recognition of Traffic Sign using FCM with SVM

Authors

  • Jayaprakash. A Assistant Professor,
  • C. Kezi Selva Vijila Principal , Christian College of Engineering and technology, Oddanchatram – 624619

DOI:

https://doi.org/10.24297/jac.v13i6.5773

Keywords:

Histogram of Orientated Gradients, Color and HAAR Feature extraction, ROI, SVM, Fuzzy C-means clustering.

Abstract

This paper mainly focuses on Traffic Sign and board Detection systems that have been placed on roads and highway. This system aims to deal with real-time traffic sign and traffic board recognition, i.e. localizing what type of traffic sign and traffic board are appears in which area of an input image at a fast processing time. Our detection module is based on proposed extraction and classification of traffic signs built upon a color probability model using HAAR feature Extraction and color Histogram of Orientated Gradients (HOG).HOG technique is used to convert original image into gray color then applies RGB for foreground. Then the Support Vector Machine (SVM) fetches the object from the above result and compares with database. At the same time Fuzzy Cmeans cluster (FCM) technique get the same output from above result and then  to compare with the database images. By using this method, accuracy of identifying the signs could be improved. Also the dynamic updating of new signals can be done. The goal of this work is to provide optimized prediction on the given sign.

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Author Biography

Jayaprakash. A, Assistant Professor,

Department of Information Technology,

Additional Files

Published

2017-02-25

How to Cite

A, J., & Selva Vijila, C. K. (2017). Detection and Recognition of Traffic Sign using FCM with SVM. JOURNAL OF ADVANCES IN CHEMISTRY, 13(6), 6285–6289. https://doi.org/10.24297/jac.v13i6.5773

Issue

Section

Articles