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CAFSM: A Communicating Adaptive Finite State Machine for Personalized Multimedia Streaming

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International Journal of Computer Applications
© 2010 by IJCA Journal
Number 26 - Article 13
Year of Publication: 2010
Authors:
Susan Elias
Jasmin C.B
Lisa Mathew
Easwarakumar.K.S
Richard Chbeir
10.5120/475-781

Susan Elias, Jasmin C.B and Richard Chbeir Lisa Mathew Easwarakumar.K.S. Article: CAFSM: A Communicating Adaptive Finite State Machine for Personalized Multimedia Streaming. International Journal of Computer Applications 1(26):86–92, February 2010. Published By Foundation of Computer Science. BibTeX

@article{key:article,
	author = {Susan Elias and Jasmin C.B and Lisa Mathew, Easwarakumar.K.S, Richard Chbeir},
	title = {Article: CAFSM: A Communicating Adaptive Finite State Machine for Personalized Multimedia Streaming},
	journal = {International Journal of Computer Applications},
	year = {2010},
	volume = {1},
	number = {26},
	pages = {86--92},
	month = {February},
	note = {Published By Foundation of Computer Science}
}

Abstract

In this paper we present the design of a multimedia presentation system which permits the dynamic adaptation of the content. The Communicating Adaptive Finite State Machine (CAFSM) presented in this paper, has been used to describe the multimedia streaming and presentation system proposed here. This system is driven by a set of messages that are used for communication and co-ordination among the various component machines which form the system

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