In this paper an approach called Multi-Frame Speaker Models (MFS) is proposed, in order to cope with performance degradation generally observed over (short and medium) time and trials in Speaker Identification's task. The approach, based on generative models, uses multiple frame's length for speech processing in training and testing phase. A complete multi-expert system is also presented which is able to implement the proposed approach on the whole set of speakers and to obtain a near optimum for the ER's reduction. © 2008 IEEE.

Speaker identification by multi-frame generative models

IMPEDOVO, DONATO;
2008-01-01

Abstract

In this paper an approach called Multi-Frame Speaker Models (MFS) is proposed, in order to cope with performance degradation generally observed over (short and medium) time and trials in Speaker Identification's task. The approach, based on generative models, uses multiple frame's length for speech processing in training and testing phase. A complete multi-expert system is also presented which is able to implement the proposed approach on the whole set of speakers and to obtain a near optimum for the ER's reduction. © 2008 IEEE.
2008
9780769533247
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11586/186035
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