[[abstract]]This paper proposes a modified parameter mapping scheme for parallel model combination (PMC) method. The modification aims to improve the discriminative capabilities of the compensated models. It is achieved by the rearrangement of the distributions of state models in order to emphasize the contribution of the mean in the following process. Both distributions of speech model and noise model are shaped in cepstral domain through a covariance contracting procedure. After the compensation steps, an expanding procedure of the adapted covariance is necessary to release the emphasis. Using this process, the discriminative capability is increased so that the recognition accuracy is improved. In this paper, the recognition of Chinese na...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstra...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
This paper presents a multiple-model framework for noise-robust speech recognition. In this framewor...
Abstract—Parallel model combination (PMC) techniques have been very successful and popularly used in...
[[abstract]]A modified parallel model combination (PMC) for noisy speech recognition is proposed suc...
10.1109/ICASSP.2013.6639097ICASSP, IEEE International Conference on Acoustics, Speech and Signal Pro...
In this paper we present an approach that makes use of both Bayesian predictive classification (BPC)...
5th International Conference on Electronic Devices, Systems and Applications, ICEDSA 2016 --6 Decemb...
Abstract. This paper addresses the problem of the mismatch between a silence model and background no...
Colloque avec actes sans comité de lecture. internationale.International audienceIn real life speech...
This paper presents an efficient method for combining models of speech and noise for robust speech r...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
It is well known that additive noise can cause a significant decrease in performance for an automati...
levels, respectively. Unfortunately, though, the performance of a speech recognition system drops dr...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstr...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstra...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
This paper presents a multiple-model framework for noise-robust speech recognition. In this framewor...
Abstract—Parallel model combination (PMC) techniques have been very successful and popularly used in...
[[abstract]]A modified parallel model combination (PMC) for noisy speech recognition is proposed suc...
10.1109/ICASSP.2013.6639097ICASSP, IEEE International Conference on Acoustics, Speech and Signal Pro...
In this paper we present an approach that makes use of both Bayesian predictive classification (BPC)...
5th International Conference on Electronic Devices, Systems and Applications, ICEDSA 2016 --6 Decemb...
Abstract. This paper addresses the problem of the mismatch between a silence model and background no...
Colloque avec actes sans comité de lecture. internationale.International audienceIn real life speech...
This paper presents an efficient method for combining models of speech and noise for robust speech r...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
It is well known that additive noise can cause a significant decrease in performance for an automati...
levels, respectively. Unfortunately, though, the performance of a speech recognition system drops dr...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstr...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstra...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
This paper presents a multiple-model framework for noise-robust speech recognition. In this framewor...