Automatic music classification is a wide-ranging and multidisciplinary area of inquiry that offers significant benefits from both academic and commercial perspectives. This dissertation focuses on the development of jMIR, a suite of powerful, flexible, accessible and original software tools that can be used to design, share and apply a wide range of automatic music classification technologies.jMIR permits users to extract meaningful information from audio recordings, symbolic musical representations and cultural information available on the Internet; to use machine learning technologies to automatically build classification models; to automatically collect profiling statistics and detect metadata errors in musical collections; to perform ex...
The computer classification of musical audio can form the basis for systems that allow new ways of i...
Much work is focused upon music genre recognition (MGR) from audio recordings,symbolic data, and oth...
This paper presents a non-conventional approach for the automatic music genre classification problem...
The thesis deals with various aspects of Automatic Musical Instrument Recognition (AMIR). AMIR means...
This doctoral dissertation presents, discusses and proposes tools for the automatic information retr...
L' identification Automatique d'Instruments de Musique (IAIM) est composée de plusieurs étapes qui c...
Ce mémoire de thèse de doctorat présente, discute et propose des outils de fouille automatique de mé...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
The aim of this work is to contribute efficient solutions to machine recognition of musical instrume...
jSymbolic is an open-source platform for extracting features from symbolic music. These features can...
A software system that automatically classifies MIDI files into hierarchically organized taxonomies ...
Musical genre classification is put into context byexplaining about the structures in music and how ...
This work defines useful features for the classification of symbolically encoded music into 14 class...
Over the last two decades, the application of machine technology has shifted from industrial to resi...
Abstract Music Information Retrieval (MIR) software is often applied for the identification of rules...
The computer classification of musical audio can form the basis for systems that allow new ways of i...
Much work is focused upon music genre recognition (MGR) from audio recordings,symbolic data, and oth...
This paper presents a non-conventional approach for the automatic music genre classification problem...
The thesis deals with various aspects of Automatic Musical Instrument Recognition (AMIR). AMIR means...
This doctoral dissertation presents, discusses and proposes tools for the automatic information retr...
L' identification Automatique d'Instruments de Musique (IAIM) est composée de plusieurs étapes qui c...
Ce mémoire de thèse de doctorat présente, discute et propose des outils de fouille automatique de mé...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
The aim of this work is to contribute efficient solutions to machine recognition of musical instrume...
jSymbolic is an open-source platform for extracting features from symbolic music. These features can...
A software system that automatically classifies MIDI files into hierarchically organized taxonomies ...
Musical genre classification is put into context byexplaining about the structures in music and how ...
This work defines useful features for the classification of symbolically encoded music into 14 class...
Over the last two decades, the application of machine technology has shifted from industrial to resi...
Abstract Music Information Retrieval (MIR) software is often applied for the identification of rules...
The computer classification of musical audio can form the basis for systems that allow new ways of i...
Much work is focused upon music genre recognition (MGR) from audio recordings,symbolic data, and oth...
This paper presents a non-conventional approach for the automatic music genre classification problem...