Program Segment Based Personalized Broadcasting
TENCON 2007 - 2007 IEEE REGION 10 CONFERENCE, VOLS 1-3(2007)
Abstract
Recently, a personalized service based on viewer's preference is available in digital broadcasting. It takes eventually aiming at user satisfactory personalized service in anytime and anywhere. Being more available in personalization, user is looking forward to consuming segments of program in his preference as well as entire program. In this paper, we propose a new broadcasting system to generate and provide segments-based personalized broadcasting service to user terminals. Selecting and filtering suitable segments in broadcasting programs are presented with the schema of TV-Anytime Forum(TVAF) metadata. The proposed system shows a scheme with which program segments are reorganized into personalized program, i.e., virtual program. To verify the usefulness of the proposed system, we demonstrated the virtual program, which was made with user preferred segments, on a test-bed which consists of service provider, user terminal and mobile terminal1.
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Key words
digital video broadcasting,TV-Anytime Forum metadata,digital broadcasting,personalized broadcasting,personalized program,personalized service,program segment,user terminals,virtual program
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