Artificial Intelligence for Smart Cities and Villages: Advanced Technologies, Development, and Challenges

Author(s): Riadh Ayachi*, Mouna Afif, Yahia Said and Abdessalem B. Abdelali

DOI: 10.2174/9789815049251122010013

Traffic Sign Detection for Smart Public Transport Vehicles: Cascading Convolutional Autoencoder With Convolutional Neural Network

Pp: 174-193 (20)

Buy Chapters

* (Excluding Mailing and Handling)

  • * (Excluding Mailing and Handling)

Abstract

SHS investigation development is considered from the geographical and historical viewpoint. 3 stages are described. Within Stage 1 the work was carried out in the Department of the Institute of Chemical Physics in Chernogolovka where the scientific discovery had been made. At Stage 2 the interest to SHS arose in different cities and towns of the former USSR. Within Stage 3 SHS entered the international scene. Now SHS processes and products are being studied in more than 50 countries.

Abstract

Traffic sign detection is one of the most important tasks for autonomous
public transport vehicles. It provides a global view of the traffic signs on the road. In
this chapter, we introduce a traffic sign detection method based on auto-encoders
and Convolutional Neural Networks. For this purpose, we propose an end-to-end
unsupervised/supervised learning method to solve a traffic sign detection task. The
main idea of the proposed approach aims to perform an interconnection between an
auto-encoder and a Convolutional Neural Networks to act as a single network to detect
traffic signs under real-world conditions. The auto-encoder enhances the resolution of
the input images and the convolutional neural network was used to detect and identify
traffic signs. Besides, to build a traffic signs detector with high performance, we
proposed a new traffic sign dataset. It contains more classes than the existing ones,
which contain 10000 images from 73 traffic sign classes captured on the Chinese roads.
The proposed detector proved its efficiency when evaluated on the custom dataset by
achieving a mean average precision of 86.42%.

We recommend

Favorable 70-S: Investigation Branching Arrow

Authors:Bentham Science Books