A new duration intrinsic model for improved speech recognition by HMM techniques is presented. Assuming an exponentially decaying time dependency of the states loop probability, the duration density can be factorized and a path early pruning theorem demonstrated. As a consequence, computational complexity is greatly reduced with respect to explicit models, whereas recognition performances improve considerably
In the past decades, statistics-based hidden Markov models (HMMs) have become the predominant approa...
The conditional independence assumption imposed by the hidden Markov models (HMMs) makes it difficul...
In this paper a method of integrating a model of suprasegmental duration with a HMM-based recogniser...
The occupancy of the HMM states is modeled by means of a Markov chain. A linear estimator is introdu...
State transition matrices as used in standard HMM decoders have two widely perceived limitations. On...
State transition matrices as used in standard HMM decoders have two widely perceived limitations. On...
The duration and spectral dynamics of speech signal are modeled as the duration high-order hidden Ma...
The duration high-order hidden Markov model (DHO-HMM) can capture the dy-namic evolution of a physic...
The duration of speech units is an important cue in speech recognition. But most of the current spee...
In this paper the incorporation of important phonetic properties into hidden Markov models (HMM) is ...
This paper describes the explicit modeling of a state duration's probability density function in HMM...
Abstract During the last decade, the most significant advances in the field of continuous speech rec...
Durations of real speech segments do not generally exhibit exponential distributions, as modelled im...
A well-known unfavorable property of HMMs in speech recognition is their inappropriate representatio...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
In the past decades, statistics-based hidden Markov models (HMMs) have become the predominant approa...
The conditional independence assumption imposed by the hidden Markov models (HMMs) makes it difficul...
In this paper a method of integrating a model of suprasegmental duration with a HMM-based recogniser...
The occupancy of the HMM states is modeled by means of a Markov chain. A linear estimator is introdu...
State transition matrices as used in standard HMM decoders have two widely perceived limitations. On...
State transition matrices as used in standard HMM decoders have two widely perceived limitations. On...
The duration and spectral dynamics of speech signal are modeled as the duration high-order hidden Ma...
The duration high-order hidden Markov model (DHO-HMM) can capture the dy-namic evolution of a physic...
The duration of speech units is an important cue in speech recognition. But most of the current spee...
In this paper the incorporation of important phonetic properties into hidden Markov models (HMM) is ...
This paper describes the explicit modeling of a state duration's probability density function in HMM...
Abstract During the last decade, the most significant advances in the field of continuous speech rec...
Durations of real speech segments do not generally exhibit exponential distributions, as modelled im...
A well-known unfavorable property of HMMs in speech recognition is their inappropriate representatio...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
In the past decades, statistics-based hidden Markov models (HMMs) have become the predominant approa...
The conditional independence assumption imposed by the hidden Markov models (HMMs) makes it difficul...
In this paper a method of integrating a model of suprasegmental duration with a HMM-based recogniser...