Analysis of Traffic Sign Detection and Recognition Techniques
No Thumbnail Available
Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Uva Wellassa University of Sri Lanka
Abstract
Automated Traffic Sign Detection and Recognition (ATSDR) is a trending research field in this
current decade. It is a very important part of the intelligent transportation system as traffic signs assist
the drivers to drive more carefully. This paper provides a review of three major steps in the ATSDR
system; video segmentation, detection, and recognition. There are many techniques used for the
detection and recognition process. However, those techniques are affected by different internal and
external conditions like camera quality(fps), lighting conditions, time periods, etc. The main
objectives are; to identify the different traffic sign detection and recognition techniques, develop the
ATSDR system by using those selected technologies and analyze the performance of those
techniques in different lighting conditions and time periods in Sri Lanka. Real time video sequences
of traffic signs were collected and partitioned into single frames using video segmentation. The traffic
signs were detected using shape-based and color-based features along with learning-based methods
(Convolutional Neural Networks (CNN)). Subsequently, the signs were recognized using selected
techniques such as Random forest method, CNN, and Support Vector Machine (SVM). Selected
techniques were applied to the 10 varieties of traffic signs in Sri Lanka in different conditions, each
having 1000 samples. Experimental results show that the approach obtained the desired results
effectively. CNN method obtained 74.16% overall accuracy, SVM method obtained 63.5% overall
accuracy and Random forest method obtained 58.6% overall accuracy. In the future, accuracy can be
improved by testing the technologies in different internal factors like different camera quality (fps)
and different computing power, as well as high-resolution images and a large number of training
images should be used for the analysis. The experimental results showed that CNN is the most
suitable technology to detect and recognize traffic signs based on the Sri Lankan traffic signs
database
Keywords: Traffic sign detection and recognition; Convolutional Neural Network; Support Vector
Machine; Shape based methods; Color based methods; Random forest
Description
Keywords
Computing and Information Science, Technology, Electronic Engineering, Communication Technology, Automated