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Deterministic and probabilistic implementation of context

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5 Author(s)
O. Brdiczka ; Lab. GRAVIR, INRIA Rhone-Alpes, Montbonnot, France ; P. Reignier ; J. L. Crowley ; D. Vaufreydaz
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This paper addresses the problem of implementing an abstract context model. First, the abstract context model is represented by a network of situations. Two different implementations for the situation model are then proposed: a deterministic one based on Petri nets and a probabilistic one based on hidden Markov models. Both implementations are illustrated and applied to real-world problems

Published in:

Fourth Annual IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOMW'06)

Date of Conference:

13-17 March 2006