Publication | Closed Access
Action detection in complex scenes with spatial and temporal ambiguities
148
Citations
31
References
2009
Year
Unknown Venue
Scene AnalysisEngineeringMachine LearningMultiple Instance LearningSemantic Human ActionsIntelligent SystemsHuman Action DetectionSocial SciencesVideo InterpretationImage AnalysisData SciencePattern RecognitionAffective ComputingRobot LearningCognitive ScienceMachine VisionObject DetectionComputer ScienceVideo UnderstandingDeep LearningAction DetectionComputer VisionHuman Action DetectorMotion DetectionScene InterpretationEye TrackingActivity Recognition
In this paper, we investigate the detection of semantic human actions in complex scenes. Unlike conventional action recognition in well-controlled environments, action detection in complex scenes suffers from cluttered backgrounds, heavy crowds, occluded bodies, and spatial-temporal boundary ambiguities caused by imperfect human detection and tracking. Conventional algorithms are likely to fail with such spatial-temporal ambiguities. In this work, the candidate regions of an action are treated as a bag of instances. Then a novel multiple-instance learning framework, named SMILE-SVM (Simulated annealing Multiple Instance LEarning Support Vector Machines), is presented for learning human action detector based on imprecise action locations. SMILE-SVM is extensively evaluated with satisfactory performances on two tasks: 1) human action detection on a public video action database with cluttered backgrounds, and 2) a real world problem of detecting whether the customers in a shopping mall show an intention to purchase the merchandise on shelf (even if they didn't buy it eventually). In addition, the complementary nature of motion and appearance features in action detection are also validated, demonstrating a boosted performance in our experiments.
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