Topic transition detection using hierarchical hidden Markov and semi-Markov models

In this paper we introduce a probabilistic framework to exploit hierarchy, structure sharing and duration information for topic transition detection in videos. Our probabilistic detection framework is a combination of a shot classification step and a detection phase using hierarchical probabilistic...

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Bibliographic Details
Main Authors: Phung, Dinh, Venkatesh, Svetha, Duong, Thi, Bui, Hung H.
Other Authors: ACM Press
Format: Conference Paper
Published: ACM Press 2005
Subjects:
Online Access:http://doi.acm.org/10.1145/1101149.1101153
http://hdl.handle.net/20.500.11937/18410
Description
Summary:In this paper we introduce a probabilistic framework to exploit hierarchy, structure sharing and duration information for topic transition detection in videos. Our probabilistic detection framework is a combination of a shot classification step and a detection phase using hierarchical probabilistic models. We consider two models in this paper: the extended Hierarchical Hidden Markov Model (HHMM) and the Coxian Switching Hidden semi-Markov Model (S-HSMM) because they allow the natural decomposition of semantics in videos, including shared structures, to be modeled directly, and thus enabling ecient inference and reducing the sample complexity in learning. Additionally, the S-HSMM allows the duration information to be incorporated, consequently the modeling of long-term dependencies in videos is enriched through both hierarchical and duration modeling. Furthermore, the use of the Coxian distribution in the S-HSMM makes it tractable to deal with long sequences in video. Our experimentation of the proposed framework on twelve educational and training videos shows that both models outperform the baseline cases (at HMM and HSMM) and performances reported in earlier work in topic detection. The superior performance of the S-HSMM over theHHMM veries our belief that duration information is an important factor in video content modeling.