We propose a Multigranular Automatic Speech Recognizer. The hypothesis is that speech signal contains information distributed on more different time scales. Many works from various scientific fields ranging from neurobiology to speech technologies, seem to concord on this assumption. In a broad sense, it seems that speech recognition in human is optimal because of a partial parallelization process according to which the left-to-right stream of speech is captured in a multilevel grid in which several linguistic analyses take place contemporarily. Our investigation aims, in this view, to apply these new ideas to the project of more robust and efficient recognizers
Approaches in Automatic Speech Recognition based on classic acoustic models seem not to...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We propose a Multigranular Automatic Speech Recognizer. The hypothesis is that speech signal contai...
Analysis of data on human auditory processing suggests machine recognition paradigm, in which parall...
National audienceThe topic of this study is automatic speech recognition and concerns more precisely...
Introduction: In recent years, machines powered by deep learning have achieved near-human levels of ...
There is widespread interest in the relationship between the neurobiological systems supporting huma...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
There is widespread interest in the relationship between the neurobiological systems supporting huma...
Speech recognition is very difficult in the context of noisy and corrupted speech. Most conventional...
<p>There is widespread interest in the relationship between the neurobiological systems supporting h...
Multiple layers of visual (and vocal) signals, plus their different onsets and offsets, represent a ...
Perceptual processes mediating recognition, including the recognition of objects and spoken words, i...
In this paper, we propose and investigate a new approach towards using multiple time scale informati...
Approaches in Automatic Speech Recognition based on classic acoustic models seem not to...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...
We propose a Multigranular Automatic Speech Recognizer. The hypothesis is that speech signal contai...
Analysis of data on human auditory processing suggests machine recognition paradigm, in which parall...
National audienceThe topic of this study is automatic speech recognition and concerns more precisely...
Introduction: In recent years, machines powered by deep learning have achieved near-human levels of ...
There is widespread interest in the relationship between the neurobiological systems supporting huma...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
There is widespread interest in the relationship between the neurobiological systems supporting huma...
Speech recognition is very difficult in the context of noisy and corrupted speech. Most conventional...
<p>There is widespread interest in the relationship between the neurobiological systems supporting h...
Multiple layers of visual (and vocal) signals, plus their different onsets and offsets, represent a ...
Perceptual processes mediating recognition, including the recognition of objects and spoken words, i...
In this paper, we propose and investigate a new approach towards using multiple time scale informati...
Approaches in Automatic Speech Recognition based on classic acoustic models seem not to...
For most languages in the world and for speech that deviates from the standard pronunciation, not en...
We have recently developed a new model of human speech recognition, based on automatic speech recogn...