Publication | Open Access
Semi-Supervised Adapted HMMs for Unusual Event Detection
280
Citations
17
References
2005
Year
Unknown Venue
Natural Language ProcessingAudio MiningAnomaly DetectionMachine LearningData ScienceUnusual EventsPattern RecognitionBayesian AdaptationEngineeringKnowledge DiscoveryNovelty DetectionTemporal Pattern RecognitionSpeech ProcessingComputer ScienceUnusual Event ModelsUnusual Event DetectionComputer VisionSpeech Recognition
We address the problem of temporal unusual event detection. Unusual events are characterized by a number of features (rarity, unexpectedness, and relevance) that limit the application of traditional supervised model-based approaches. We propose a semi-supervised adapted hidden Markov model (HMM) framework, in which usual event models are first learned from a large amount of (commonly available) training data, while unusual event models are learned by Bayesian adaptation in an unsupervised manner. The proposed framework has an iterative structure, which adapts a new unusual event model at each iteration. We show that such a framework can address problems due to the scarcity of training data and the difficulty in pre-defining unusual events. Experiments on audio, visual, and audiovisual data streams illustrate its effectiveness, compared with both supervised and unsupervised baseline methods.
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