Publication | Open Access
Image analysis and rule-based reasoning for a traffic monitoring system
393
Citations
21
References
2000
Year
Automotive TrackingEngineeringAdvanced Driver-assistance SystemIntelligent SystemsVisual DataIntelligent Traffic ManagementImage AnalysisData SciencePattern RecognitionSystems EngineeringTransportation EngineeringMachine VisionObject DetectionTraffic EngineeringComputer ScienceHeuristic RulesAutonomous DrivingTraffic Signal ControlTraffic MonitoringArtificial Intelligence TechniquesComputer VisionAutomated ReasoningRoad Traffic Control
The paper presents an approach for detecting vehicles in urban traffic scenes by means of rule-based reasoning on visual data. The strength of the approach is its formal separation between the low-level image processing modules and the high-level module, which provides a general-purpose knowledge-based framework for tracking vehicles in the scene. The image-processing modules extract visual data from the scene by spatio-temporal analysis during daytime, and by morphological analysis of headlights at night. The high-level module is designed as a forward chaining production rule system, working on symbolic data, i.e., vehicles and their attributes (area, pattern, direction, and others) and exploiting a set of heuristic rules tuned to urban traffic conditions. The synergy between the artificial intelligence techniques of the high-level and the low-level image analysis techniques provides the system with flexibility and robustness.
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