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A combined Bayesian Markovian approach for behaviour recognition

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Carter, N., Young, D. and Ferryman, J. (2006) A combined Bayesian Markovian approach for behaviour recognition. In: Tang, Y. Y., Wang, S. P., Lorette, G., Yeung, D. S. and Yan, H. (eds.) 18th International Conference on Pattern Recognition, Vol 1, Proceedings. International Conference on Pattern Recognition. IEEE Computer Soc, Los Alamitos, pp. 761-764. ISBN 1051-4651 0-7695-2521-0

Abstract/Summary

Numerous techniques exist which can be used for the task of behavioural analysis and recognition. Common amongst these are Bayesian networks and Hidden Markov Models. Although these techniques are extremely powerful and well developed, both have important limitations. By fusing these techniques together to form Bayes-Markov chains, the advantages of both techniques can be preserved, while reducing their limitations. The Bayes-Markov technique forms the basis of a common, flexible framework for supplementing Markov chains with additional features. This results in improved user output, and aids in the rapid development of flexible and efficient behaviour recognition systems.

Additional Information Proceedings Paper 18th International Conference on Pattern Recognition (ICPR 2006) AUG 20-24, 2006 Hong Kong, PEOPLES R CHINA
Item Type Book or Report Section
URI https://reading-clone.eprints-hosting.org/id/eprint/14373
Item Type Book or Report Section
Divisions Science > School of Mathematical, Physical and Computational Sciences > Department of Computer Science
Additional Information Proceedings Paper 18th International Conference on Pattern Recognition (ICPR 2006) AUG 20-24, 2006 Hong Kong, PEOPLES R CHINA
Publisher IEEE Computer Soc
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