International audienceA fast likelihood computation approach called dynamic Gaussian selection (DGS) is proposed for HMM-based continuous speech recognition. DGS approach is a one-pass search technique which generates a dynamic shortlist of Gaussians for each state during the procedure of likelihood computation. The shortlist consists of the Gaussians which make prominent contribution to the likelihood. In principle, DGS is an extension of the technique of Partial Distance Elimination, and it requires almost no additional memory for the storage of Gaussian shortlists. DGS algorithm has been implemented by modifying the likelihood computation module in HTK 3.4 system. Results from experiments on TIMIT and HIWIRE corpora indicate that this ap...
A summary of the theory of the hybrid connectionist HMM (hidden Markov model) continuous speech reco...
We describe a sub-vector clustering technique to reduce the memory size and computational cost of co...
Speech dynamic features are routinely used in current speech recognition systems in combination with...
International audienceLVCSR systems are usually based on continuous density HMMs, which are typicall...
This paper presents a new time/memory-efficient algorithm for the evaluation of state likelihoods in...
Nowadays, HMM-based speech recognition systems are used in many real time processing applications, f...
This paper studies algorithms for reducing the com-putational eort of the mixture density calculatio...
Speech dynamic features, which provide smoothed estimates of the derivatives of the spectral paramet...
For Automatic Speech Recognition ASR systems using continuous Hidden Markov Models (HMMs), the compu...
The Self-Organizing Map (SOM) is widely applied for data clustering and visualization. In this paper...
Acoustic modeling using mixtures of multivariate Gaussians is the prevalent approach for many speech...
Speech dynamic feature are routinely used in current speech recognition systems in combination with ...
Resumo: Atualmente os sistemas de reconhecimento de fala baseados em HMMs são utilizados em diversas...
In an HMM based large vocabulary continuous speech recognition system, the evaluation of - context d...
Senones were introduced to share Hidden Markov model (HMM) parameters at a sub-phonetic level in [3]...
A summary of the theory of the hybrid connectionist HMM (hidden Markov model) continuous speech reco...
We describe a sub-vector clustering technique to reduce the memory size and computational cost of co...
Speech dynamic features are routinely used in current speech recognition systems in combination with...
International audienceLVCSR systems are usually based on continuous density HMMs, which are typicall...
This paper presents a new time/memory-efficient algorithm for the evaluation of state likelihoods in...
Nowadays, HMM-based speech recognition systems are used in many real time processing applications, f...
This paper studies algorithms for reducing the com-putational eort of the mixture density calculatio...
Speech dynamic features, which provide smoothed estimates of the derivatives of the spectral paramet...
For Automatic Speech Recognition ASR systems using continuous Hidden Markov Models (HMMs), the compu...
The Self-Organizing Map (SOM) is widely applied for data clustering and visualization. In this paper...
Acoustic modeling using mixtures of multivariate Gaussians is the prevalent approach for many speech...
Speech dynamic feature are routinely used in current speech recognition systems in combination with ...
Resumo: Atualmente os sistemas de reconhecimento de fala baseados em HMMs são utilizados em diversas...
In an HMM based large vocabulary continuous speech recognition system, the evaluation of - context d...
Senones were introduced to share Hidden Markov model (HMM) parameters at a sub-phonetic level in [3]...
A summary of the theory of the hybrid connectionist HMM (hidden Markov model) continuous speech reco...
We describe a sub-vector clustering technique to reduce the memory size and computational cost of co...
Speech dynamic features are routinely used in current speech recognition systems in combination with...