An Edge Assisted Robust Smart Traffic Management and Signalling System for Guiding Emergency Vehicles During Peak Hours

04/26/2023
by   Shuvadeep Masanta, et al.
0

Congestion in traffic is an unavoidable circumstance in many cities in India and other countries. It is an issue of major concern. The steep rise in the number of automobiles on the roads followed by old infrastructure, accidents, pedestrian traffic, and traffic rule violations all add to challenging traffic conditions. Given these poor conditions of traffic, there is a critical need for automatically detecting and signaling systems. There are already various technologies that are used for traffic management and signaling systems like video analysis, infrared sensors, and wireless sensors. The main issue with these methods is they are very costly and high maintenance is required. In this paper, we have proposed a three-phase system that can guide emergency vehicles and manage traffic based on the degree of congestion. In the first phase, the system processes the captured images and calculates the Index value which is used to discover the degree of congestion. The Index value of a particular road depends on its width and the length up to which the camera captures images of that road. We have to take input for the parameters (length and width) while setting up the system. In the second phase, the system checks whether there are any emergency vehicles present or not in any lane. In the third phase, the whole processing and decision-making part is performed at the edge server. The proposed model is robust and it takes into consideration adverse weather conditions such as hazy, foggy, and windy. It works very efficiently in low light conditions also. The edge server is a strategically placed server that provides us with low latency and better connectivity. Using Edge technology in this traffic management system reduces the strain on cloud servers and the system becomes more reliable in real-time because the latency and bandwidth get reduced due to processing at the intermediate edge server.

READ FULL TEXT

page 5

page 6

page 8

research
06/04/2021

Intelligent Transportation Systems to Mitigate Road Traffic Congestion

Intelligent transport systems have efficiently and effectively proved th...
research
02/13/2020

Internet of Smart-Cameras for Traffic Lights Optimization in Smart Cities

Smart and decentralized control systems have recently been proposed to h...
research
09/07/2021

Smart Traffic Monitoring System using Computer Vision and Edge Computing

Traffic management systems capture tremendous video data and leverage ad...
research
08/26/2020

Integrated Self-Organized Traffic Light Controllers for Signalized Intersections

Detecting emergency vehicles arrival on roads has been the focus for man...
research
07/01/2023

Intelligent Traffic Control with Smart Speed Bumps

Traffic congestion and safety continue to pose significant challenges in...
research
08/31/2020

High Accuracy Traffic Light Controller for Increasing the Given Green Time Utilization

Traffic congestion has become one of the major problems in the urban cit...
research
09/09/2020

Tactical Decision Making for Emergency Vehicles based on a Combinational Learning Method

Increasing response time of emergency vehicles (EVs) could lead to an im...

Please sign up or login with your details

Forgot password? Click here to reset