Publication | Closed Access
Probabilistic group-level motion analysis and scenario recognition
82
Citations
23
References
2011
Year
Unknown Venue
EngineeringMachine LearningIntelligent SystemsVideo SurveillanceVisual SurveillanceImage Sequence AnalysisSoft GroupingImage AnalysisSoft SegmentationData SciencePattern RecognitionObject TrackingMachine VisionMoving Object TrackingComputer ScienceStructure From MotionComputer VisionEye TrackingActivity RecognitionUnconstraint Surveillance EnvironmentsScenario RecognitionMotion Analysis
This paper addresses the challenge of recognizing behavior of groups of individuals in unconstraint surveillance environments. As opposed to approaches that rely on agglomerative or decisive hierarchical clustering techniques, we propose to recognize group interactions without making hard decisions about the underlying group structure. Instead we use a probabilistic grouping strategy evaluated from the pairwise spatial-temporal tracking information. A path-based grouping scheme determines a soft segmentation of groups and produces a weighted connection graph where its edges express the probability of individuals belonging to a group. Without further segmenting this graph, we show how a large number of low- and high-level behavior recognition tasks can be performed. Our work builds on a mature multi-camera multi-target person tracking system that operates in real-time. We derive probabilistic models to analyze individual track motion as well as group interactions. We show that the soft grouping can combine with motion analysis elegantly to robustly detect and predict group-level activities. Experimental results demonstrate the efficacy of our approach.
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