Towards AI‐based traffic counting system with edge computing

Abstract

The recent years have witnessed a considerable rise in the number of vehicles, which has placed transportation infrastructure and traffic control under tremendous pressure. Yielding timely and accurate traffic flow information is essential in the development of traffic control strategies. Despite the continual advances and the wealth of literature available in intelligent transportation system (ITS), there is a lack of practical traffic counting system, which is readily deployable on edge devices. In this study, we introduce a low‐cost and effective edge‐based system integrating object detection models to perform vehicle detecting, tracking, and counting. First, a vehicle detection dataset (VDD) representing traffic conditions in Vietnam was created. Several deep learning models for VDD were then examined on two different edge device types. Using this detection, we presented a lightweight counting method seamlessly …

Publication
Journal of Advanced Transportation
FieldDetails
Volume2021
Issue1
Pages5551976
PublisherHindawi
Scholar articlesTowards AI‐based traffic counting system with edge computing - DL Dinh, HN Nguyen, HT Thai, KH Le - Journal of Advanced Transportation, 2021 - Cited by 46 Related articles All 6 versions