The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) systems. A crucial part in a MDT-based recognizer is the computation of the reliability masks from noisy data. To estimate accurate masks in environments with unknown, non-stationary noise statistics, we need to rely on a strong model for the speech. In this paper, an unsupervised technique using non-negative matrix factorization (NMF) discovers phone-sized time-frequency patches into which speech can be decomposed. The input matrix for the NMF is constructed using a high resolution and reassigned time-frequency representation. This representation facilitates an accurate detection of the patches that are active in unseen no...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
We present a tecchnique for denoising speech using temporally regularized nonnegative matrix factori...
Missing feature methods of noise compensation for speech recognition operate by first identifying co...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
Missing data recognition has been developed in order to increase noise robustness in automatic speec...
The performance of automatic speech recognition systems declines dramatically in noisy environments....
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
We present a self-learning algorithm using a bottom-up based approach to automatically discover, acq...
This paper proposes a speech recognition method for applications in adverse noisy environments. Spee...
Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition....
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
2019-05-02Noise is usually present in collected speech data, and its presence can affect subsequent ...
We propose a joint filtering and factorization algorithm to re-cover latent structure from noisy spe...
International audienceAutomatic speech recognition (ASR) has reached very high levels of performance...
Spectral masking is a promising method for noise suppres-sion in which regions of the spectrogram th...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
We present a tecchnique for denoising speech using temporally regularized nonnegative matrix factori...
Missing feature methods of noise compensation for speech recognition operate by first identifying co...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
Missing data recognition has been developed in order to increase noise robustness in automatic speec...
The performance of automatic speech recognition systems declines dramatically in noisy environments....
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
We present a self-learning algorithm using a bottom-up based approach to automatically discover, acq...
This paper proposes a speech recognition method for applications in adverse noisy environments. Spee...
Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition....
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
2019-05-02Noise is usually present in collected speech data, and its presence can affect subsequent ...
We propose a joint filtering and factorization algorithm to re-cover latent structure from noisy spe...
International audienceAutomatic speech recognition (ASR) has reached very high levels of performance...
Spectral masking is a promising method for noise suppres-sion in which regions of the spectrogram th...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
We present a tecchnique for denoising speech using temporally regularized nonnegative matrix factori...
Missing feature methods of noise compensation for speech recognition operate by first identifying co...