Tags constitute a very useful tool for multimedia document indexing. This PhD thesis deals with automatic tagging, which consists in associating a set of tags to each song automatically, using an algorithm. We use boosting techniques to design a learning which better considers the complexity of the information expressed by music. A boosting algorithm is proposed, which can jointly use song descriptions associated to excerpts of different durations. This algorithm is used to fuse new descriptions, which belong to different abstraction levels. Finally, a new learning framework is proposed for automatic tagging, which better leverages the subtlety ofthe information expressed by music.Les tags constituent un outil très utile pour indexer des do...
Music auto-tagging refers to automatically assigning seman-tic labels (tags) such as genre, mood and...
Presentat a Machine Learning for Media Discovery Workshop, celebrat dins The 37th International Conf...
Comunicació presentada a: ML4MD Machine Learning for Music Discovery Workshop del congrés ICML2019 c...
Les tags constituent un outil très utile pour indexer des documents multimédias. Cette thèse de doct...
This doctoral dissertation presents, discusses and proposes tools for the automatic information retr...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
International audienceAutomatic tagging of music has mostly been treated as a classification problem...
to describe different aspects of a music clip. With the explosive growth of digital music available ...
International audienceThis paper presents the participation to the MusiClef 2012 Multimodal Music Ta...
Ce mémoire de thèse de doctorat présente, discute et propose des outils de fouille automatique de mé...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
Getting information from multimedia documents is a very important field of research. We can now proc...
As music distribution has evolved form physical media to digital content, tens of millions of songs ...
Audio tags correspond to keywords that people use to de-scribe different aspects of a music clip, su...
Music auto-tagging refers to automatically assigning seman-tic labels (tags) such as genre, mood and...
Presentat a Machine Learning for Media Discovery Workshop, celebrat dins The 37th International Conf...
Comunicació presentada a: ML4MD Machine Learning for Music Discovery Workshop del congrés ICML2019 c...
Les tags constituent un outil très utile pour indexer des documents multimédias. Cette thèse de doct...
This doctoral dissertation presents, discusses and proposes tools for the automatic information retr...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
International audienceAutomatic tagging of music has mostly been treated as a classification problem...
to describe different aspects of a music clip. With the explosive growth of digital music available ...
International audienceThis paper presents the participation to the MusiClef 2012 Multimodal Music Ta...
Ce mémoire de thèse de doctorat présente, discute et propose des outils de fouille automatique de mé...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
Getting information from multimedia documents is a very important field of research. We can now proc...
As music distribution has evolved form physical media to digital content, tens of millions of songs ...
Audio tags correspond to keywords that people use to de-scribe different aspects of a music clip, su...
Music auto-tagging refers to automatically assigning seman-tic labels (tags) such as genre, mood and...
Presentat a Machine Learning for Media Discovery Workshop, celebrat dins The 37th International Conf...
Comunicació presentada a: ML4MD Machine Learning for Music Discovery Workshop del congrés ICML2019 c...