The amount of information produced by media such as Youtube, Facebook, or Instagram is a gold mine of information for machine and deep learning algorithms. A gold mine that cannot be reached until this information has been refined. For supervised algorithms, it is necessary to associate a label to each available piece of information allowing to identify and use it. This is a tedious, slow, and costly task, performed by human annotators on a voluntary or professional basis. However, the amount of information generated each day far exceeds our human annotation capabilities. It is then necessary to turn to learning methods capable of using the information in its raw or slightly processed form. For that, we will focus on weak annotations in the...
Crowdsourcing is a popular tool for collecting large amounts of annotated data, but the specific for...
L'avènement de l'Internet des Objets (IoT) a permis le développement de réseaux de capteurs acoustiq...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
The amount of information produced by media such as Youtube, Facebook, or Instagram is a gold mine o...
La quantité de données produite par les médias tel que Youtube est une mine d'or d'information pour ...
International audienceThis paper proposes an overview of the latest advances and challenges in sound...
Submitted to DCASE2018 WorkshopInternational audienceThis paper presents DCASE 2018 task 4. The task...
The main topics addressed in this thesis are the use of active learning and deep learning methods in...
The automatic recognition of sound events has gained attention in the past few years, motivated by ...
With the ever-increasing consumption of audio-visual media on the internet, video understanding has ...
Audio source separation is the task of estimating the individual signals of several sound sources wh...
International audienceThis paper proposes a benchmark of submissions to Detection and Classification...
Deep learning has fueled an explosion of applications, yet training deep neural networks usually req...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Weak labels are a recurring problem in the context of ambient sound analysis. While multiple methods...
Crowdsourcing is a popular tool for collecting large amounts of annotated data, but the specific for...
L'avènement de l'Internet des Objets (IoT) a permis le développement de réseaux de capteurs acoustiq...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
The amount of information produced by media such as Youtube, Facebook, or Instagram is a gold mine o...
La quantité de données produite par les médias tel que Youtube est une mine d'or d'information pour ...
International audienceThis paper proposes an overview of the latest advances and challenges in sound...
Submitted to DCASE2018 WorkshopInternational audienceThis paper presents DCASE 2018 task 4. The task...
The main topics addressed in this thesis are the use of active learning and deep learning methods in...
The automatic recognition of sound events has gained attention in the past few years, motivated by ...
With the ever-increasing consumption of audio-visual media on the internet, video understanding has ...
Audio source separation is the task of estimating the individual signals of several sound sources wh...
International audienceThis paper proposes a benchmark of submissions to Detection and Classification...
Deep learning has fueled an explosion of applications, yet training deep neural networks usually req...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Weak labels are a recurring problem in the context of ambient sound analysis. While multiple methods...
Crowdsourcing is a popular tool for collecting large amounts of annotated data, but the specific for...
L'avènement de l'Internet des Objets (IoT) a permis le développement de réseaux de capteurs acoustiq...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...