Automatic speech recognition in a room with distant microphones is strongly affected by noise and reverberation. In scenarios where the speech signal is captured by several arbitrarily located microphones the degree of distortion differs from one channel to another. In this work we deal with measures extracted from a given distorted signal that either estimate its quality or measure how well it fits the acoustic models of the recognition system. We then apply them to solve the problem of selecting the signal (i.e. the channel) that presumably leads to the lowest recognition error rate. New channel selection techniques are presented, and compared experimentally in reverberant environments with other approaches reported in the literature. Sig...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...
Automatic speech recognition in a room with distant microphones is strongly affected by noise and re...
The performance of ASR systems in a room environment with distant microphones is strongly affected b...
Shifting from a single to a multi-microphone setting, distant speech recognition can be benefited fr...
Automatic speech recognition from multiple distant micro-phones poses significant challenges because...
If speech is captured by several arbitrarily-located microphones in a room, the degree of distortion...
Automatic speech recognition from multiple distant micro- phones poses significant challenges becaus...
In a multi-microphone distant speech recognition task, the redundancy of information that results fr...
Abstract. Automatic Speech Recognition (ASR) in reverberant rooms can be improved by choosing traini...
This work analyzes the influence of reverberation on automatic speech recognition (ASR) systems and ...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
This work presents an experimental analysis of distant-talking speech recognition in a variety of re...
Distant-speech recognition represents a technology of fundamental importance for future development ...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...
Automatic speech recognition in a room with distant microphones is strongly affected by noise and re...
The performance of ASR systems in a room environment with distant microphones is strongly affected b...
Shifting from a single to a multi-microphone setting, distant speech recognition can be benefited fr...
Automatic speech recognition from multiple distant micro-phones poses significant challenges because...
If speech is captured by several arbitrarily-located microphones in a room, the degree of distortion...
Automatic speech recognition from multiple distant micro- phones poses significant challenges becaus...
In a multi-microphone distant speech recognition task, the redundancy of information that results fr...
Abstract. Automatic Speech Recognition (ASR) in reverberant rooms can be improved by choosing traini...
This work analyzes the influence of reverberation on automatic speech recognition (ASR) systems and ...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
This work presents an experimental analysis of distant-talking speech recognition in a variety of re...
Distant-speech recognition represents a technology of fundamental importance for future development ...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...
Multichannel fusion strategies are presented for the distributed microphone recognition environment,...