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Hierarchical Motion Evolution for Action Recognition Authors: Hongsong Wang, Wei Wang, Liang Wang Center for Research on Intelligent Perception and Computing, National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences
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Outline Introduction Method Experiments Conclusions 2/15
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Outline Introduction Method Experiments Conclusions 3/15
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Action Recognition Action definition – a series of temporal motions Local motion – appearance evolution Global motion – motion evolution 4/15
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Traditional Method Traditional method – local spatio-temporal features – encoding schemes Advantages – discriminative local motion – state-of-the-art performance Disadvantages – no global motion 5/15
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Deep Method Feature learning – replace hand-crafted features with learned features – no global motion End-to-end architecture – hard to learn motion feature – high computational complexity 6/15
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VideoDarwin VideoDarwin method [1] – function capable of ordering the frames temporally captures appearance evolution – regard frame sequence as ordered list, learn a ranking function – use the parameters as video representation 7/15 [1] B. Fernando et al., Modeling video evolution for action recognition. In CVPR, 2015.
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Outline Introduction Method Experiments Conclusions 8/15
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Hiearchical Motion Evolution (1/3) The weakness of VideoDarwin – one ranking machine can not capture the global ordering for long video sequence – sensitive to large appearance changes Proposed hierarchical motion evolution structure – abstract semantic information in a hierarchical way – capture global and high-level ordering of motion evolution – robust to large appearance changes 9/15
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Hiearchical Motion Evolution (2/3) Hiearchical motion evolution – first layer: different ranking machines to model local order for video clips – second layer: another ranking machine to model global order 10/15
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Hiearchical Motion Evolution (3/3) Robust to large appearance changes – action is composed of a series of ordered motions – output of first layer: local motion representation – second layer: model motion evolution 11/15
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Outline Introduction Method Experiments Conclusions 12/15
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Experiments MPII cooking activities dataset [3] ChaLearn 2013 Gesture dataset [6] 13/15 [1] B. Fernando et al., Modeling video evolution for action recognition. In CVPR, 2015. [2] T. Pfister et al., Domain-adaptive discriminative one-shot learning of gestures. In ECCV, 2014. [3] M. Rohrbach et al., A database for fine grained activity detection of cooking activities. In CVPR, 2012. [4] J. Wu et al., Fusing multi-modal features for gesture recognition. In ICMI, 2013. [5] A. Yao et al., Gesture recognition portfolios for personalization. In CVPR, 2014. [6] S. Escalera et al., Multi-modal gesture recognition challenge 2013: Dataset and results. In ICMI, 2013.
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Parameter Evaluation 14/15
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Outline Introduction Method Experiments Conclusions 15/15
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Conclusions Propose a novel hierarchical method to learn video representation, considers both local motion and global motion. Our video representation achieve the state-of-the art results in fine-grained action and gesture recognition. 16/15
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THANK YOU Suggestions Questions Email: hongsong.wang@nlpr.ia.ac.cn
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