Speaker Recognition In Noisy Conditions With Limited Training Data


Autoria(s): McLaughlin, Niall; Ji, Ming; Crookes, Daniel
Data(s)

01/09/2011

Resumo

In this paper we present a novel method for performing speaker recognition with very limited training data and in the presence of background noise. Similarity-based speaker recognition is considered so that speaker models can be created with limited training speech data. The proposed similarity is a form of cosine similarity used as a distance measure between speech feature vectors. Each speech frame is modelled using subband features, and into this framework, multicondition training and optimal feature selection are introduced, making the system capable of performing speaker recognition in the presence of realistic, time-varying noise, which is unknown during training. Speaker identi?cation experiments were carried out using the SPIDRE database. The performance of the proposed new system for noise compensation is compared to that of an oracle model; the speaker identi?cation accuracy for clean speech by the new system trained with limited training data is compared to that of a GMM trained with several minutes of speech. Both comparisons have demonstrated the effectiveness of the new model. Finally, experiments were carried out to test the new model for speaker identi?cation given limited training data and with differing levels and types of realistic background noise. The results have demonstrated the robustness of the new system.

Formato

application/pdf

Identificador

http://pure.qub.ac.uk/portal/en/publications/speaker-recognition-in-noisy-conditions-with-limited-training-data(3a14ce5d-c9dd-4b14-b6dd-710abf01d83d).html

http://pure.qub.ac.uk/ws/files/2580215/McLaughlin_Eusipco_2011.pdf

Idioma(s)

eng

Direitos

info:eu-repo/semantics/openAccess

Fonte

McLaughlin , N , Ji , M & Crookes , D 2011 , ' Speaker Recognition In Noisy Conditions With Limited Training Data ' Paper presented at 19th European Signal Processing Conference , Barcelona , Spain , 01/09/2011 - 01/09/2011 , pp. 1294-1298 .

Tipo

conferenceObject