International audienceMulti-microphone signal processing techniques have the potential to greatly improve the robustness of speech recognition (ASR) in distant microphone settings. However, in everyday environments, typified by complex non-stationary noise backgrounds, designing effective multi-microphone speech recognition systems is non trivial. In particular, optimal performance requires the tight integration of the front-end signal processing and the back-end statistical speech and noise source modelling. The best way to achieve this in a modern deep learning speech recognition framework remains unclear. Further, variability in microphone array design --- and consequent lack of real training data for any particular configuration --- may...
International audienceThe CHiME challenge series aims to advance robust automatic speech recognition...
International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Vario...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
International audienceSpeech enhancement and automatic speech recognition (ASR) are most often evalu...
When speech is captured with a distant microphone, it includes distortions caused by noise, reverber...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
International audienceMy talk will focus on robustness to background noise in distant-microphone spe...
In this thesis, a joint optimal method for clean speech estimation and ASR in a mismatched condition...
International audienceDistant microphone speech recognition systems that operate with humanlike robu...
In voice-enabled domestic or meeting environments, distributed microphone arrays aim to process dist...
The paper describes a system for automatic speech recognition (ASR) that is benchmarked with data of...
International audienceDistant-microphone automatic speech recognition (ASR) remains a challenging go...
Automatic speech recognition in a room with distant microphones is strongly affected by noise and re...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
International audienceThe CHiME challenge series aims to advance robust automatic speech recognition...
International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Vario...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
International audienceSpeech enhancement and automatic speech recognition (ASR) are most often evalu...
When speech is captured with a distant microphone, it includes distortions caused by noise, reverber...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
International audienceMy talk will focus on robustness to background noise in distant-microphone spe...
In this thesis, a joint optimal method for clean speech estimation and ASR in a mismatched condition...
International audienceDistant microphone speech recognition systems that operate with humanlike robu...
In voice-enabled domestic or meeting environments, distributed microphone arrays aim to process dist...
The paper describes a system for automatic speech recognition (ASR) that is benchmarked with data of...
International audienceDistant-microphone automatic speech recognition (ASR) remains a challenging go...
Automatic speech recognition in a room with distant microphones is strongly affected by noise and re...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
International audienceThe CHiME challenge series aims to advance robust automatic speech recognition...
International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Vario...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...