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A new procedure to classify temporal data with im- precise hidden Markov models is proposed. A differ- ent model is learned from each sequence by coupling the imprecise Dirichlet model with the EM algorithm. As a descriptor of the model associated to a sequence, we consider the expected value of the manifest vari- able in the limit of stationarity of the Markov chain. For imprecise models, only the bounds of this descrip- tor can be evaluated. In practice, the sequence, which can be regarded as a trajectory in the features space, is summarized by this method as a hyperbox in the same space. These static but interval-valued data are classified by a credal extension of the k-NN algorithm. Experiments on human action recognition data show that the method achieves the required robustness and outperforms other imprecise methods.
The paper is available in the following formats:
Alessandro Antonucci | alessandro@idsia.ch | |
Rocco De Rosa | roccomilano@tiscali.it | |
Alessandro Giusti | alessandrog@idsia.ch | |
Fabio Cuzzolin | fabio.cuzzolin@brookes.ac.uk |
Send any remarks to isipta13@hds.utc.fr.