Speaker recognition using least squares IOHMMs | IEEE Conference Publication | IEEE Xplore

Speaker recognition using least squares IOHMMs


Abstract:

The purpose of the speaker recognition is to determine a speaker's identity from his/her speech utterances. Every speaker has his/her own physiological as well as behavio...Show More

Abstract:

The purpose of the speaker recognition is to determine a speaker's identity from his/her speech utterances. Every speaker has his/her own physiological as well as behavioral characteristics embedded in his/her speech utterances. These characteristics can be extracted from utterances and statistically modeled. Through pattern recognition of unseen test speech with statistically trained models, a speaker identity can be recognized. In this paper, we present a discriminative classification based approach for speaker recognition. The system makes use of regularized least squares regression (RLSR) based input output hidden Markov models (IOHMM) as classifier for closed set, text independent speaker identification. The IOHMM allows us to map input sequences to output sequences, using the same processing style as recurrent neural networks. The RLSR allows the IOHMM to be trained in a more discriminative style. The use of hidden Markov models (HMM) and support vector machines (SVM) has also been studied. The performance of the system is assessed using a set of male and female speakers drawn from the TIMIT corpus.
Date of Conference: 09-11 December 2002
Date Added to IEEE Xplore: 11 June 2003
Print ISBN:0-7803-7713-3
Conference Location: St. Thomas, VI, USA

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