Ming Zhao

Ming Zhao

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YouTubeEvent: On Large-Scale Video Event Classification
Bingbing Ni
The 3rd International Workshop on Video Event Categorization, Tagging and Retrieval for Real-World Applications at IEEE ICCV'2011
Taxonomic Classification for Web-based Videos
Xiaoyun Wu
IEEE Conf on Computer Vision and Pattern Recognition (CVPR), IEEE (2010)
A Large-Scale Taxonomic Classification System for Web-based Videos
Reto Strobl
John Zhang
the 11th European Conference on Computer Vision (ECCV 2010)
YouTubeCat: Learning to Categorize Wild Web Videos
Zheshen Wang
Baoxin Li
IEEE Conf on Computer Vision and Pattern Recognition (CVPR) (2010)
Tour the world: a technical demonstration of a web-scale landmark recognition engine
Yan-Tao Zheng
Ulrich Buddemeier
Fernando Brucher
Tat-Seng Chua
MM '09: Proceedings of the seventeen ACM international conference on Multimedia, ACM, New York, NY, USA (2009), pp. 961-962
Tour the World: building a web-scale landmark recognition engine
Yantao Zheng
Ulrich Buddemeier
Fernando Brucher
Tat-Seng Chua
International Conference on Computer Vision and Pattern Recognition (CVPR) (2009)
Audiovisual Celebrity Recognition in Unconstrained Web Videos
Pedro Moreno
Proceedings of the IEEE Conference on Acoustics, Speech, and Signal Processing (ICASSP) (2009)
Visual Synset: Towards a Higher-level Visual Representation
Yantao Zheng
Shi-Yong Neo
Tat-Seng Chua
Qi Tian
CVPR (2008)
Preview abstract A typical automatic face recognition system is composed of three parts: face detection, face alignment and face recognition. Conventionally, these three parts are processed in a bottom-up manner: face detection is performed first, then the results are passed to face alignment, and finally to face recognition. The bottom-up approach is one extreme of vision approaches. The other extreme approach is top-down. In this paper, we proposed a stochastic mixture approach for combining bottom-up and top-down face recognition: face recognition is performed from the results of face alignment in a bottom-up way, and face alignment is performed based on the results of face recognition in a top-down way. By modeling the mixture face recognition as a stochastic process, the recognized person is decided probabilistically according to the probability distribution coming from the stochastic face recognition, and the recognition problem becomes that “who the most probable person is when the stochastic process of face recognition goes on for a long time or ideally for an infinite duration”. This problem is solved with the theory of Markov chains by modeling the stochastic process of face recognition as a Markov chain. As conventional face alignment is not suitable for this mixture approach, discriminative face alignment is proposed. And we also prove that the stochastic mixture face recognition results only depend on discriminative face alignment, not on conventional face alignment. The effectiveness of our approach is shown by extensive experiments. View details
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