International audienceAutomatic tagging of music has mostly been treated as a classification problem. In this framework, the association of a tag to a song is characterized in a " hard " fashion: the tag is either relevant or not. Yet, the relevance of a tag to a song is not always evident. Indeed, during the ground-truth annotation process, several annotators may express doubts, or disagree with each other. In this paper, we propose to fuse annota-tors' decisions in a way to keep information about this uncertainty. This fusion provides us continuous scores, that are used for training a regressive boosting algorithm. Our experiments show that regression with this soft ground truth leads to a more accurate learning, and better predictions, c...
In this paper, we present a set of simple and efficient regularized logistic regression algorithms t...
The increasing amount of music data approaching the scale of ten million of tracks poses the challen...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Automatic tagging of music has mostly been treated as a clas-sification problem. In this framework, ...
Crowdsourcing has become a common approach for annotating large amounts of data. It has the advantag...
Tags constitute a very useful tool for multimedia document indexing. This PhD thesis deals with auto...
Les tags constituent un outil très utile pour indexer des documents multimédias. Cette thèse de doct...
Music Information Retrieval aims to automate the access to large-volume music data, including browsi...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
One of the first building blocks to create a voice assistant relates to the task of tagging entities...
Crowdsourcing is a popular tool for collecting large amounts of annotated data, but the specific for...
to describe different aspects of a music clip. With the explosive growth of digital music available ...
Music tags are commonly used to describe and categorize music. Various auto-tagging models and datas...
Audio tags correspond to keywords that people use to de-scribe different aspects of a music clip, su...
In this paper, we present a set of simple and efficient regularized logistic regression algorithms t...
The increasing amount of music data approaching the scale of ten million of tracks poses the challen...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Automatic tagging of music has mostly been treated as a clas-sification problem. In this framework, ...
Crowdsourcing has become a common approach for annotating large amounts of data. It has the advantag...
Tags constitute a very useful tool for multimedia document indexing. This PhD thesis deals with auto...
Les tags constituent un outil très utile pour indexer des documents multimédias. Cette thèse de doct...
Music Information Retrieval aims to automate the access to large-volume music data, including browsi...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
One of the first building blocks to create a voice assistant relates to the task of tagging entities...
Crowdsourcing is a popular tool for collecting large amounts of annotated data, but the specific for...
to describe different aspects of a music clip. With the explosive growth of digital music available ...
Music tags are commonly used to describe and categorize music. Various auto-tagging models and datas...
Audio tags correspond to keywords that people use to de-scribe different aspects of a music clip, su...
In this paper, we present a set of simple and efficient regularized logistic regression algorithms t...
The increasing amount of music data approaching the scale of ten million of tracks poses the challen...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...