Publication | Closed Access
Similarity based vehicle trajectory clustering and anomaly detection
275
Citations
7
References
2005
Year
Unknown Venue
Automotive TrackingAnomaly DetectionEngineeringVideo ProcessingVideo SurveillanceImage AnalysisData MiningPattern RecognitionReal Traffic VideoVideo Content AnalysisGroup TrajectoriesOutlier DetectionKnowledge DiscoveryVehicle Motion TrajectoriesTraffic MonitoringComputer VisionVideo AnalysisVehicle Trajectory ClusteringFuzzy Clustering
In this paper, we proposed a hierarchical clustering framework to classify vehicle motion trajectories in real traffic video based on their pairwise similarities. First raw trajectories are pre-processed and resampled at equal space intervals. Then spectral clustering is used to group trajectories with similar spatial patterns. Dominant paths and lanes can be distinguished as a result of two-layer hierarchical clustering. Detection of novel trajectories is also possible based on the clustering results. Experimental results demonstrate the superior performance of spectral clustering compared with conventional fuzzy K-means clustering and some results of anomaly detection are presented.
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