Publication | Closed Access
Vehicle detection, tracking and classification in urban traffic
178
Citations
14
References
2012
Year
Unknown Venue
Automotive TrackingEngineeringMachine LearningVideo SurveillanceForeground BlobVisual SurveillanceIntelligent Traffic ManagementImage ClassificationImage AnalysisPattern RecognitionTransportation EngineeringMachine VisionObject DetectionForeground BlobsComputer ScienceTraffic MonitoringRoadside CctvVehicle DetectionComputer Vision
This paper presents a system for vehicle detection, tracking and classification from roadside CCTV. The system counts vehicles and separates them into four categories: car, van, bus and motorcycle (including bicycles). A new background Gaussian Mixture Model (GMM) and shadow removal method have been used to deal with sudden illumination changes and camera vibration. A Kalman filter tracks a vehicle to enable classification by majority voting over several consecutive frames, and a level set method has been used to refine the foreground blob. Extensive experiments with real world data have been undertaken to evaluate system performance. The best performance results from training a SVM (Support Vector Machine) using a combination of a vehicle silhouette and intensity-based pyramid HOG features extracted following background subtraction, classifying foreground blobs with majority voting. The evaluation results from the videos are encouraging: for a detection rate of 96.39%, the false positive rate is only 1.36% and false negative rate 4.97%. Even including challenging weather conditions, classification accuracy is 94.69%.
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