Efficient duration modelling in the hierarchical hidden semi-Markov models and their applications
Modeling patterns in temporal data has arisen as an important problem in engineering and science. This has led to the popularity of several dynamic models, in particular the renowned hidden Markov model (HMM) [Rabiner, 1989]. Despite its widespread success in many cases, the standard HMM often fails to model more complex data whose elements are correlated hierarchically or over a long period. Such problems are, however, frequently encountered in practice. Existing efforts to overcome this weakness often address either one of these two aspects separately, mainly due to computational intractability. Motivated by this modeling challenge in many real world problems, in particular, for video surveillance and segmentation, this thesis aims to develop tractable probabilistic models that can jointly model duration and hierarchical information in a unified framework. We believe that jointly exploiting statistical strength from both properties will lead to more accurate and robust models for the needed task. To tackle the modeling aspect, we base our work on an intersection between dynamic graphical models and statistics of lifetime modeling. Realizing that the key bottleneck found in the existing works lies in the choice of the distribution for a state, we have successfully integrated the discrete Coxian distribution [Cox, 1955], a special class of phase-type distributions, into the HMM to form a novel and powerful stochastic model termed as the Coxian Hidden Semi-Markov Model (CxHSMM). We show that this model can still be expressed as a dynamic Bayesian network, and inference and learning can be derived analytically.
Year of publication: |
2008
|
---|---|
Authors: | Duong, Thi V. T. |
Publisher: |
Curtin University of Technology, Dept. of Computing. |
Subject: | modeling patterns | temporal data | complex data | hidden Markov model (HMM) | duration and hierarchical information | unified framework |
Saved in:
freely available
Saved in favorites
Similar items by subject
-
POELS, G., (2009)
-
Detecting the migration of mobile service customers using fuzzy clustering
Bose, Indranil, (2015)
-
A unified entropic pricing framework of option : using Cressie-Read family of divergences
Yu, Xisheng, (2021)
- More ...