International audienceVocal Tract Length Normalization (VTLN) has been shown to be an efficient speaker normalization tool for HMM based systems. In this paper we show that it is equally efficient for a template based recognition system. Template based systems, while promising, have as potential drawback that templates maintain all non phonetic details apart from the essential phonemic properties; i.e. they retain information on speaker and acoustic recording circumstances. This may lead to a very inefficient usage of the database. We show that after VTLN significantly more speakers - also from opposite gender - contribute templates to the matching sequence compared to the non-normalized case. In experiments on the Wall Street Journal datab...
Vocal tract length normalization (VTLN) has been successfully used in automatic speech recognition f...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
This paper describes the method of using multi-template unsupervised speaker adaptation based on HMM...
Vocal Tract Length Normalization (VTLN) has been shown to be an efficient speaker normalization tool...
Inter-speaker variability, one of the problems faced in speech recognition system, has caused the pe...
In most automatic speech recognition (ASR) systems, speaker differences are compensated by normalizi...
Generally speaking, the speaker-dependence of a speech recognition system stems from speaker-depende...
In most automatic speech recognition (ASR) systems, speaker differences are compensated by normalizi...
Abstract. Inter-speaker variability, one of the problems faced in speech recognition system, has cau...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
This paper proposes and evaluates classifiers based on Vocal Tract Length Normalization (VTLN) in a ...
This paper proposes and evaluates classifiers based on Vocal Tract Length Normalization (VTLN) in a ...
It has been shown in several recent publications that application of vocal tract normalization (VTN)...
Despite their known weaknesses, hidden Markov models (HMMs) have been the dominant technique for aco...
Despite their known weaknesses, hidden Markov models (HMMs) have been the dominant technique for aco...
Vocal tract length normalization (VTLN) has been successfully used in automatic speech recognition f...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
This paper describes the method of using multi-template unsupervised speaker adaptation based on HMM...
Vocal Tract Length Normalization (VTLN) has been shown to be an efficient speaker normalization tool...
Inter-speaker variability, one of the problems faced in speech recognition system, has caused the pe...
In most automatic speech recognition (ASR) systems, speaker differences are compensated by normalizi...
Generally speaking, the speaker-dependence of a speech recognition system stems from speaker-depende...
In most automatic speech recognition (ASR) systems, speaker differences are compensated by normalizi...
Abstract. Inter-speaker variability, one of the problems faced in speech recognition system, has cau...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
This paper proposes and evaluates classifiers based on Vocal Tract Length Normalization (VTLN) in a ...
This paper proposes and evaluates classifiers based on Vocal Tract Length Normalization (VTLN) in a ...
It has been shown in several recent publications that application of vocal tract normalization (VTN)...
Despite their known weaknesses, hidden Markov models (HMMs) have been the dominant technique for aco...
Despite their known weaknesses, hidden Markov models (HMMs) have been the dominant technique for aco...
Vocal tract length normalization (VTLN) has been successfully used in automatic speech recognition f...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
This paper describes the method of using multi-template unsupervised speaker adaptation based on HMM...