This paper presents the preliminary analyses towards the development of a formal method for generating autonomous, dynamic ontology systems in the context of web-based audio signals applications. In the music domain, social tags have become important components of database management, recommender systems, and song similarity en- gines. In this study, we map the audio similarity features from the Iso- phone database [25] to social tags collected from the Last.fm online mu- sic streaming service, by using neuro-fuzzy (NF) and multi-layer percep- tron (MLP) neural networks. The algorithms were tested on a large-scale dataset (Isophone) including more than 40 000 songs from 10 different musical genres. The classification experiments were conduc...
In this thesis, we address the problems of classifying and recommending music present in large colle...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
The use of deep neural networks has exploded in popularity recently. Thinking that music information...
This paper presents the preliminary analyses towards the development of a formal method for generati...
Ontologies have been established for knowledge sharing and are widely used for structuring domains o...
Technology is changing the way in which music is produced, distributed and consumed. An aspiring mus...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
High-level semantics such as 'mood' and 'usage' are very useful in music retriev...
PhDThe development of tools and services for the realisation of the Semantic Web has been a very ac...
Social tags inherent in online music services such as Last.fm provide a rich source of information o...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
In this paper, we describe the MX-Onto ontology for semantic classification of music resources based...
Browsing sound collections in a social database is a complex task when no uniformity in the classifi...
Although content is fundamental to our music listening preferences, the leading performance in music...
With the advent of digitized music, many online streaming companies such as Spotify have capitalized...
In this thesis, we address the problems of classifying and recommending music present in large colle...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
The use of deep neural networks has exploded in popularity recently. Thinking that music information...
This paper presents the preliminary analyses towards the development of a formal method for generati...
Ontologies have been established for knowledge sharing and are widely used for structuring domains o...
Technology is changing the way in which music is produced, distributed and consumed. An aspiring mus...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
High-level semantics such as 'mood' and 'usage' are very useful in music retriev...
PhDThe development of tools and services for the realisation of the Semantic Web has been a very ac...
Social tags inherent in online music services such as Last.fm provide a rich source of information o...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
In this paper, we describe the MX-Onto ontology for semantic classification of music resources based...
Browsing sound collections in a social database is a complex task when no uniformity in the classifi...
Although content is fundamental to our music listening preferences, the leading performance in music...
With the advent of digitized music, many online streaming companies such as Spotify have capitalized...
In this thesis, we address the problems of classifying and recommending music present in large colle...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
The use of deep neural networks has exploded in popularity recently. Thinking that music information...