An interesting problem in accessing music digital libraries is how to combine the information of different sources in order to improve the retrieval effectiveness. This paper introduces an approach to represent a collection of tagged songs through an hidden Markov model with the purpose to develop a system that merges in the same framework both acoustic similarity and semantic descriptions. The former provides content-based information on song similarity, the latter provides context-aware information about individual songs. Experimental results show how the proposed model leads to better performances than approaches that rank songs using both a single information source and a their linear combination
The rise of digital music distribution has provided users with unprecedented access to vast song cat...
This paper presents a novel approach to robust, content-based retrieval of digital music. We formula...
Automatic methods for music navigation and music recommendation exploit the structure in the music t...
An interesting problem in accessing music digital libraries is how to combine the information of dif...
An interesting problem in music information retrieval is how to combine the information from differe...
An interesting problem in music information retrieval is how to combine the information from differe...
The rise of the Internet has led the music industry to a transition from physical media to online pr...
In this thesis we propose a novel approach to semantic music tagging. The project uses a modified Hi...
Content-based Music Information Retrieval (MIR) systems seek to automatically extract meaningful inf...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
A fundamental and general representation of audio and music which integrates multi-modal data source...
A fundamental and general representation of audio and music which integrates multi-modal data source...
Navigation in and access to the contents of digital audio archives have become increasingly importan...
Music tags include different types of musical information. The tags of same or different types can b...
Music digital libraries pose interesting and challenging research problems, in particular for the de...
The rise of digital music distribution has provided users with unprecedented access to vast song cat...
This paper presents a novel approach to robust, content-based retrieval of digital music. We formula...
Automatic methods for music navigation and music recommendation exploit the structure in the music t...
An interesting problem in accessing music digital libraries is how to combine the information of dif...
An interesting problem in music information retrieval is how to combine the information from differe...
An interesting problem in music information retrieval is how to combine the information from differe...
The rise of the Internet has led the music industry to a transition from physical media to online pr...
In this thesis we propose a novel approach to semantic music tagging. The project uses a modified Hi...
Content-based Music Information Retrieval (MIR) systems seek to automatically extract meaningful inf...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
A fundamental and general representation of audio and music which integrates multi-modal data source...
A fundamental and general representation of audio and music which integrates multi-modal data source...
Navigation in and access to the contents of digital audio archives have become increasingly importan...
Music tags include different types of musical information. The tags of same or different types can b...
Music digital libraries pose interesting and challenging research problems, in particular for the de...
The rise of digital music distribution has provided users with unprecedented access to vast song cat...
This paper presents a novel approach to robust, content-based retrieval of digital music. We formula...
Automatic methods for music navigation and music recommendation exploit the structure in the music t...