Towards smart traffic lights based on deep learning and traffic flow information

Abstract

Traffic congestion is a significant cause hindering development and adversely affecting socio-economic life; mean-while, traditional traffic light systems have become obsolete. Therefore, the application of machine learning to enhance the effectiveness of these systems has received much attention from the research community. However, their practical application is limited because of the lack of training datasets and high computational requirements. In this paper, we propose a lightweight approach that can dynamically control traffic lights at intersections based on current traffic situation. To do this, we design a deep learning model based on the Bidirectional LSTM architecture to estimate the appropriate duration of traffic lights by learning traffic flow information. Our model achieves high accuracy and is lightweight enough to deploy resource-constrained IoT devices. In addition, we introduce an algorithm to generate …

Publication
2022 9th NAFOSTED Conference on Information and Computer Science (NICS)
FieldDetails
Pages1-6
PublisherIEEE
Scholar articlesTowards smart traffic lights based on deep learning and traffic flow information - NY Tran-Van, XH Nguyerr, KH Le - 2022 9th NAFOSTED Conference on Information and …, 2022 - Cited by 4 Related articles