A unified fuzzy approach to statistical models for speech and speaker recognition is presented in this paper. Since the Expectation-Maximisation (EM) algorithm is a powerful learning method for maximising the likelihood of the observed data in the presence of hidden variables, the fuzzy EM algorithm based on the fuzzy c-means algorithm is thereby established. From this fuzzy EM algorithm, the fuzzy algorithms for hidden Markov models, Gaussian mixture models, and vector quantisation are developed. The experimental results on TI46 and ANDOSL speech data corpora for speech and speaker recognition show that the fuzzy approach is capable of achieving higher recognition accuracy. 1
This paper investigates the task of SR (Speaker Recognition) for the state-of-the-art techniques. Th...
The paper presents a new variant of parameter estimation methods for discrete hidden Markov models(H...
Speaker recognition is a biometric operation of accepting a claimed person based on analyzing his sp...
Abstract. A generalised fuzzy approach to statistical modelling tech-niques for speech recognition i...
A fuzzy clustering based modification of Gaussian mixture models (GMMs) for speaker recognition is p...
A new fuzzy technique called fuzzy entropy (FE) clustering is proposed and applied to hidden Markov ...
This paper proposes a method to estimate the a priori probability for speakers based on the training...
This paper presents a novel approach to speech recognition using fuzzy modeling. The task begins wit...
: Gibbs distribution is used to represent fuzzy codebooks of individual speakers. The method of fuzz...
AbstractThe state-of-art speaker recognition system employs vocal tract information for modeling thr...
The performance of any speaker recognition system depends on the duration of the speech samples. The...
This paper proposes a fuzzy approach to speaker verication. For an input utterance and a claimed ide...
In state mixture modelling (SMM), the temporal structure of the observation sequences is represented...
This paper proposes normalisation methods based on fuzzy set theory for speaker verication. A claime...
In vector quantisation (VQ) based speaker recognition, the minimum overall average distortion rule i...
This paper investigates the task of SR (Speaker Recognition) for the state-of-the-art techniques. Th...
The paper presents a new variant of parameter estimation methods for discrete hidden Markov models(H...
Speaker recognition is a biometric operation of accepting a claimed person based on analyzing his sp...
Abstract. A generalised fuzzy approach to statistical modelling tech-niques for speech recognition i...
A fuzzy clustering based modification of Gaussian mixture models (GMMs) for speaker recognition is p...
A new fuzzy technique called fuzzy entropy (FE) clustering is proposed and applied to hidden Markov ...
This paper proposes a method to estimate the a priori probability for speakers based on the training...
This paper presents a novel approach to speech recognition using fuzzy modeling. The task begins wit...
: Gibbs distribution is used to represent fuzzy codebooks of individual speakers. The method of fuzz...
AbstractThe state-of-art speaker recognition system employs vocal tract information for modeling thr...
The performance of any speaker recognition system depends on the duration of the speech samples. The...
This paper proposes a fuzzy approach to speaker verication. For an input utterance and a claimed ide...
In state mixture modelling (SMM), the temporal structure of the observation sequences is represented...
This paper proposes normalisation methods based on fuzzy set theory for speaker verication. A claime...
In vector quantisation (VQ) based speaker recognition, the minimum overall average distortion rule i...
This paper investigates the task of SR (Speaker Recognition) for the state-of-the-art techniques. Th...
The paper presents a new variant of parameter estimation methods for discrete hidden Markov models(H...
Speaker recognition is a biometric operation of accepting a claimed person based on analyzing his sp...