Litcius/Paper detail

Vision‐based vehicle detection for road traffic congestion classification

Ameni Chetouane, Sabra Mabrouk, Imen Jemili, Mohamed Mosbah

2020Concurrency and Computation Practice and Experience43 citationsDOI

Abstract

Summary Due to the increasing number of vehicles in circulation in different urban cities, several automatic traffic monitoring systems have been developed. In particular, traffic monitoring systems using roadside cameras are becoming extensively deployed, as they offer imperative technological advantages compared with other traffic monitoring systems. Vehicle detection and traffic congestion classification are two main steps for video‐based traffic congestion detection systems; the associated methods have a deep impact on the performance of the whole system. In this paper, we investigate four selected vehicle detection methods namely Gaussian Mixture Model (GMM), GMM‐Kalman filter, Optical Flow, and ACF object detector in two contexts: urban and highway. Three traffic congestion classification methods are also studied. The comparative study of the different methods allows us to choose the most appropriate ones to be integrated in the framework proposed to solve the traffic issues in the bridge of Bizerte.

Topics & Concepts

Computer scienceTraffic congestionKalman filterTraffic congestion reconstruction with Kerner's three-phase theoryTraffic flow (computer networking)Floating car dataObject detectionReal-time computingDetectorMixture modelVehicle Information and Communication SystemArtificial intelligenceRoad trafficTransport engineeringPattern recognition (psychology)Computer securityTelecommunicationsEngineeringVideo Surveillance and Tracking MethodsAutomated Road and Building ExtractionAdvanced Neural Network Applications