Computer Vision-Enabled Smart Traffic Monitoring for Sustainable Transportation Management

Aug 31, 2022·
Yunli Shao
,
Chieh (Ross) Wang
Andreas Berres
Andreas Berres
,
Jovan Yoshioka
,
Adian Cook
,
Haowen Xu
· 1 min read
Abstract
Transportation accounts for a significant portion of total global energy consumption. Excessive energy consumption usually occurs in urban traffic environments with congestion and travel delays. With the advancement of remote sensing and computer vision technologies, real-time traffic conditions can be monitored. Therefore, sustainable transportation management strategies can be developed to optimize the overall energy and environment performance and reduce congestion and emissions. This work presents a smart traffic monitoring system based on remote camera sensors. Real-time and historical traffic conditions at the US Department of Energy’s Oak Ridge National Laboratory (ORNL) were monitored and analyzed to develop optimal transportation management strategies for sustainability. Computer vision algorithms were developed and applied to process the real-time camera data to obtain complete traffic information across the ORNL campus. Weeks of historical data were collected and processed to analyze the traffic and identify bottlenecks. The proposed traffic monitoring and management approach can be applied and extended to benefit other campuses or urban areas.
Type
Publication
In Proceedings of the International Conference on Transportation and Development 2022

A simple line drawing map of ORNL’s campus showing three traffig signals along the main road. Each traffic signal has a fisheye camera, and there are additional CCTV cameras at the East and West gate, and at multiple parking lots. For each camera, a static view is shown.
Overview of available traffic signals, camera infrastructure, and parking lot locations on ORNL campus.