Sciweavers

MLMI
2004
Springer

Multistream Dynamic Bayesian Network for Meeting Segmentation

13 years 10 months ago
Multistream Dynamic Bayesian Network for Meeting Segmentation
This paper investigates the automatic analysis and segmentation of meetings. A meeting is analysed in terms of individual behaviours and group interactions, in order to decompose each meeting in a sequence of relevant phases, named meeting actions. Three feature families are extracted from multimodal recordings: prosody from individual lapel microphone signals, speaker activity from microphone array data and lexical features from textual transcripts. A statistical approach is then used to relate low-level features with a set of abstract categories. In order to provide a flexible and powerful framework, we have employed a dynamic Bayesian network based model, characterized by multiple stream processing and flexible state duration modelling. Experimental results demonstrate the strength of this system, providing a meeting action error rate of 9%.
Alfred Dielmann, Steve Renals
Added 02 Jul 2010
Updated 02 Jul 2010
Type Conference
Year 2004
Where MLMI
Authors Alfred Dielmann, Steve Renals
Comments (0)