This paper describes experimental research investigating the genre classification utility of combining features ex-tracted from lyrical, audio, symbolic and cultural sources of musical information. It was found that cultural features consisting of information extracted from both web searches and mined listener tags were particularly effec-tive, with the result that classification accuracies were achieved that compare favorably with the current state of the art of musical genre classification. It was also found that features extracted from lyrics were less effective than the other feature types. Finally, it was found that, with some exceptions, combining feature types does improve classification performance. The new lyricFetcher and jLyrics ...
The number of studies investigating automated genre classification is growing following the increasi...
We examine performance of different classifiers on different audio feature sets to determine the gen...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
Multimedia content can be described in versatile ways as its essence is not limited to one view. For...
Recently there has been an increasing amount of work in the area of automatic genre classification o...
Abstract. Music genres can be seen as categorical descriptions used to classify music basing on vari...
Mood is an emerging metadata type and access point in music digital libraries (MDL) and online music...
The computer classification of musical audio can form the basis for systems that allow new ways of i...
This thesis proposes a new methodology for evaluation of automatic music genre classification. It is...
Musical genre classification is a useful tool for automatically attaching semantic information to mu...
The number of studies investigating automated genre classification is growing following the increasi...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic data, and ot...
Abstract. Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic da...
The number of studies investigating automated genre classification is growing following the increasi...
We examine performance of different classifiers on different audio feature sets to determine the gen...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
Multimedia content can be described in versatile ways as its essence is not limited to one view. For...
Recently there has been an increasing amount of work in the area of automatic genre classification o...
Abstract. Music genres can be seen as categorical descriptions used to classify music basing on vari...
Mood is an emerging metadata type and access point in music digital libraries (MDL) and online music...
The computer classification of musical audio can form the basis for systems that allow new ways of i...
This thesis proposes a new methodology for evaluation of automatic music genre classification. It is...
Musical genre classification is a useful tool for automatically attaching semantic information to mu...
The number of studies investigating automated genre classification is growing following the increasi...
Modern digital music libraries are huge. Searching and retrieving requested piece of music is challe...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic data, and ot...
Abstract. Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic da...
The number of studies investigating automated genre classification is growing following the increasi...
We examine performance of different classifiers on different audio feature sets to determine the gen...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...