Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition. Conventional MDT-systems require acoustic models that are expressed in the log-spectral rather than in the cepstral domain, which leads to a loss in accuracy. Therefore, we have already introduced a MDT-technique that can be applied in any feature domain that is a linear transform of log-spectra. This MDT-system requires hard decisions about the reliability of each spectral component. When computed from noisy data, misclassification errors in the mask are hardly unavoidable and the recognition rate will significantly degrade. The risk of misclassifications can be reduced by estimating a probability that the component is reliable, e.g. a fuzz...
International audienceAutomatic speech recognition (ASR) has reached very high levels of performance...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
Missing feature theory (MFT) has demonstrated great potential for improving the noise robustness in ...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Motivated by the human ability to maintain a high level of speech recognition when large parts of th...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
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....
In the "missing data" (MD) approach to noise robust automatic speech recognition (ASR), s...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
International audienceAutomatic speech recognition (ASR) has reached very high levels of performance...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
Missing feature theory (MFT) has demonstrated great potential for improving the noise robustness in ...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Motivated by the human ability to maintain a high level of speech recognition when large parts of th...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
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....
In the "missing data" (MD) approach to noise robust automatic speech recognition (ASR), s...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
International audienceAutomatic speech recognition (ASR) has reached very high levels of performance...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...