Speech enhancement and automatic speech recognition (ASR) are most often evaluated in matched (or multi-condition) settings where the acoustic conditions of the training data match (or cover) those of the test data. Few studies have systematically assessed the impact of acoustic mismatches between training and test data, especially concerning recent speech enhancement and state-of-the-art ASR techniques. In this article, we study this issue in the context of the CHiME- 3 dataset, which consists of sentences spoken by talkers situated in challenging noisy environments recorded using a 6-channel tablet based microphone array. We provide a critical analysis of the results published on this dataset for various signal enhancement, feature extrac...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
The availability of realistic simulated corpora is of key importance for the future progress of dist...
In this paper, we present algorithms for dealing with variability and mismatch in speech recognition...
International audienceSpeech enhancement and automatic speech recognition (ASR) are most often evalu...
International audienceThe CHiME challenge series aims to advance far field speech recognition techno...
International audienceMy talk will focus on robustness to background noise in distant-microphone spe...
This paper presents the design and outcomes of the CHiME-3 challenge, the first open speech recognit...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
International audienceDistant-microphone automatic speech recognition (ASR) remains a challenging go...
International audienceThis paper presents the design and outcomes of the CHiME-3 challenge, the firs...
International audienceThe CHiME challenge series aims to advance robust automatic speech recognition...
The paper describes a system for automatic speech recognition (ASR) that is benchmarked with data of...
Distant-microphone automatic speech recognition (ASR) re-mains a challenging goal in everyday enviro...
Automatic speech recognition has become a ubiquitous technology integrated into our daily lives. How...
Automatic speech recognition (ASR) systems have made dramatic performance leaps in the recent past. ...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
The availability of realistic simulated corpora is of key importance for the future progress of dist...
In this paper, we present algorithms for dealing with variability and mismatch in speech recognition...
International audienceSpeech enhancement and automatic speech recognition (ASR) are most often evalu...
International audienceThe CHiME challenge series aims to advance far field speech recognition techno...
International audienceMy talk will focus on robustness to background noise in distant-microphone spe...
This paper presents the design and outcomes of the CHiME-3 challenge, the first open speech recognit...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
International audienceDistant-microphone automatic speech recognition (ASR) remains a challenging go...
International audienceThis paper presents the design and outcomes of the CHiME-3 challenge, the firs...
International audienceThe CHiME challenge series aims to advance robust automatic speech recognition...
The paper describes a system for automatic speech recognition (ASR) that is benchmarked with data of...
Distant-microphone automatic speech recognition (ASR) re-mains a challenging goal in everyday enviro...
Automatic speech recognition has become a ubiquitous technology integrated into our daily lives. How...
Automatic speech recognition (ASR) systems have made dramatic performance leaps in the recent past. ...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
The availability of realistic simulated corpora is of key importance for the future progress of dist...
In this paper, we present algorithms for dealing with variability and mismatch in speech recognition...