Reconnaissances de scènes audio par architecture profonde / Mise en oeuvre du Deep Learning au CRIANN

Conférence
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GRICAD
Alain RAKOTOMAMONJY / Benoist GASTON
Lundi 30 janvier 2017
"Réalisation technique : Antoine Orlandi | Tous droits réservés"

Machines can now watch and interpret images, recognize speech and music genres, yet they are hardly capable of understanding daily life sound events e.g the sounds that occur in a kitchen at morning. 
Today's researches dealing with audio scene understanding are mostly limited to the problem of categorization and localization of few tens of sound event classes and environmental contexts. While such tasks are useful, the ultimate goal of audio scene understanding goes far beyond the assignment of labels to few kinds of sound events. Instead, it aims at developing machines that fully understand audio input. However, before making sense from audio, it is necessary to be able to recognize these audio contexts. 
In this talk, we present the results we achieved by performing representation learning (using deep learning) for classifying audio scenes.