ICSLP1998: the 5th International Conference on Spoken Language Processing, November 30 - December 4, 1998, Sydney, Australia.In this paper, we evaluate performance of model adaptation by the previously proposed HMM decomposition method on telephone speech recognition. The HMM decomposition method separates a composed HMM into a known phoneme HMM and an unknown noise and channel HMM by maximum likelihood (ML) estimation of the HMM parameters. A transfer function (telephone channel) HMM is estimated using adaptation speech data by applying the HMM decomposition twice in the linear spectral domain for noise and in the cepstral domain for channel. The telephone speech data for evaluation are recorded through 10 kinds of ordinary analog tele...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
Colloque avec actes et comité de lecture. internationale.International audienceHidden Markov models ...
A challenging scenario is addressed in which a hands-free speech recognizer operates in a noisy offi...
The presence of background noise and the frequency response of a transmission line like in telephone...
[[abstract]]© 1997 Elsevier - This paper presents an adaptation method of speech hidden Markov model...
[[abstract]]© 1998 Institute of Electrical and Electronics Engineers - In this letter, we propose th...
ICASSP1997: IEEE International Conference on Acoustics, Speech, and Signal Processing, April 21-24...
Abstract: A study on speech conversion technology is addressed to improve the telephone speech recog...
The performance of a speech recognizer is degraded drastically in reverberant environments. We propo...
In this paper, we present several methods for mapping recognition engine requirements to mobile phon...
Summarization: We describe an approach for the estimation of acoustic phonetic models that will be u...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
In this paper a challenging scenario is addressed in which a hands-free speech recognizer operates i...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
Colloque avec actes et comité de lecture. internationale.International audienceHidden Markov models ...
A challenging scenario is addressed in which a hands-free speech recognizer operates in a noisy offi...
The presence of background noise and the frequency response of a transmission line like in telephone...
[[abstract]]© 1997 Elsevier - This paper presents an adaptation method of speech hidden Markov model...
[[abstract]]© 1998 Institute of Electrical and Electronics Engineers - In this letter, we propose th...
ICASSP1997: IEEE International Conference on Acoustics, Speech, and Signal Processing, April 21-24...
Abstract: A study on speech conversion technology is addressed to improve the telephone speech recog...
The performance of a speech recognizer is degraded drastically in reverberant environments. We propo...
In this paper, we present several methods for mapping recognition engine requirements to mobile phon...
Summarization: We describe an approach for the estimation of acoustic phonetic models that will be u...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
In this paper a challenging scenario is addressed in which a hands-free speech recognizer operates i...
The performance of well-trained speech recognizers using high quality full bandwidth speech data is ...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
Colloque avec actes et comité de lecture. internationale.International audienceHidden Markov models ...
A challenging scenario is addressed in which a hands-free speech recognizer operates in a noisy offi...