Publication | Closed Access
Fast unsupervised ego-action learning for first-person sports videos
229
Citations
15
References
2011
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningVideo SummarizationVideo RetrievalVideo InterpretationText MiningNatural Language ProcessingImage AnalysisData SciencePattern RecognitionSelf-supervised LearningVideo IndexingVideo Content AnalysisRobot LearningMotion Histogram CodebookRobust Ego-action CategorizationDanceMachine VisionComputer ScienceVideo UnderstandingDeep LearningComputer VisionHuman MovementArtsUnsupervised Ego-action Learning
Portable high-quality sports cameras (e.g. head or helmet mounted) built for recording dynamic first-person video footage are becoming a common item among many sports enthusiasts. We address the novel task of discovering first-person action categories (which we call ego-actions) which can be useful for such tasks as video indexing and retrieval. In order to learn ego-action categories, we investigate the use of motion-based histograms and unsupervised learning algorithms to quickly cluster video content. Our approach assumes a completely unsupervised scenario, where labeled training videos are not available, videos are not pre-segmented and the number of ego-action categories are unknown. In our proposed framework we show that a stacked Dirichlet process mixture model can be used to automatically learn a motion histogram codebook and the set of ego-action categories. We quantitatively evaluate our approach on both in-house and public YouTube videos and demonstrate robust ego-action categorization across several sports genres. Comparative analysis shows that our approach outperforms other state-of-the-art topic models with respect to both classification accuracy and computational speed. Preliminary results indicate that on average, the categorical content of a 10 minute video sequence can be indexed in under 5 seconds.
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