International audienceAutomatic speech recognition (ASR) has reached very high levels of performance in controlled situations. However, the performance degrades significantly when environmental noise occurs during the recognition process. Nowadays, the major challenge is to reach a good robustness to adverse conditions, so that automatic speech recognizers can be used in real situations. Missing data theory is a very attractive and promising approach. Unlike other denoising methods, missing data recognition does not match the whole data with the acoustic models, but instead considers part of the signal as missing, i.e. corrupted by noise. While speech recognition with missing data can be handled efficiently by methods such as data imputatio...
Current automatic speech recognisers rely for a great deal on statistical models learned from traini...
Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition....
Additive noise has long been an issue for robust automatic speech recognition (ASR) systems. One app...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
This paper addresses the problem of spectrographic mask estima-tion in the context of missing data r...
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
This paper addresses the problem of spectrographic mask estimation in the context of missing data re...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Missing data recognition has been developed in order to increase noise robustness in automatic speec...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
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 been applied to handle the problem of noise-robust speech recognition....
Additive noise has long been an issue for robust automatic speech recognition (ASR) systems. One app...
International audienceAutomatic speech recognition (ASR) has reached a very high level of performanc...
This paper addresses the problem of spectrographic mask estima-tion in the context of missing data r...
The application of Missing Data Theory (MDT) has shown to improve the robustness of automatic speech...
This paper addresses the problem of spectrographic mask estimation in the context of missing data re...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Missing data recognition has been developed in order to increase noise robustness in automatic speec...
Missing feature methods of noise compensation for speech recognition operate by removing components ...
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 been applied to handle the problem of noise-robust speech recognition....
Additive noise has long been an issue for robust automatic speech recognition (ASR) systems. One app...