The Use of Multi-Sensor Video Surveillance System to Assess the Capacity of the Road Network
Author:
Shepelev Vladimir1, Aliukov Sergei1, Nikolskaya Kseniya1, Das Arkaprava2, Slobodin Ivan1
Affiliation:
1. Institute of Engineering and Technology , South Ural State University , Chelyabinsk 454080 , Russia 2. Atmospheric Plasma Division, Institute for Plasma Research , Gandhinagar 382428 , Gujarat, India
Abstract
Abstract
Currently, in many cities around the world there is a significant increase in the number of vehicles, which leads to an aggravation of problems and contradictions in the road and transport system. This is especially true of traffic congestion, since the presence of the congestion leads to a number of negative consequences: an increase in travel time, additional fuel consumption and vehicle wear, stress and irritation of drivers and passengers, environmental poisoning and others. To solve the problem of congestion, it is necessary to have a reliable system for collecting information about the situation on the roads and a well-developed method for analyzing the collected information. The paper discusses the possibilities of collecting the required information using multi-touch video cameras and ways to improve them. A distinctive feature of this study is the registration of pedestrians crossing the road at the intersection. The aim of the work is to develop methods for collecting information using road sensor video surveillance systems in a traffic congestion and data processing using statistical methods such as: multiple regression analysis, cluster analysis, multidimensional scaling methods and others. The tasks were set: 1) to identify the most significant factors affecting the intensity of movement of vehicles at intersections in a congestion; 2) divide congestion into clusters with the identification of their characteristics; 3) to give a visual representation of multidimensional statistical information obtained with the help of multi-touch road video cameras.
Publisher
Walter de Gruyter GmbH
Subject
Computer Science Applications,General Engineering
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