We consider the problem of subgenre classification in music datasets. We propose an adaptation of association analysis, a technique to explore the inherent relationships among data objects in a problem domain, to capture subgenres characteristics through acoustical features. We further propose to use those characteristics to engage in a pairwise comparison among subgenres when classifying a new music piece. The initial investigation on our approach is examined through empirical experiments on a number of music datasets. The results are presented and discussed, with various related issues addressed
[[abstract]]With the popularity of multimedia applications, a large amount of music data has been ac...
Recently many research has been conducted to retrieve pertinent parameters and adequate models for a...
Music analysis, i.e. using computers to analyze fully notated pieces of musical score, is one of the...
We consider the problem of subgenre classification in music datasets. We propose an adaptation of ass...
In this thesis, we investigate the problem of automatic music genre classification in the field of M...
We consider the genre classification problem in Music Information Retrieval and report our initial i...
In the field of artificial intelligence, supervised machine learning enables us to try to develop au...
Music classification is a key ingredient for electronic music distribution. Because of the lack of s...
Music genre meta-data is of paramount importance for the organization of music reposito-ries. People...
Abstract. Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic da...
In this letter, we present different approaches for music genre classification. The proposed techniq...
Given the huge size of music collections available on the Web, automatic genre classification is cru...
This paper presents a non-conventional approach for the automatic music genre classification problem...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
With the high increase in the availability of digital music, it has become of interest to automatica...
[[abstract]]With the popularity of multimedia applications, a large amount of music data has been ac...
Recently many research has been conducted to retrieve pertinent parameters and adequate models for a...
Music analysis, i.e. using computers to analyze fully notated pieces of musical score, is one of the...
We consider the problem of subgenre classification in music datasets. We propose an adaptation of ass...
In this thesis, we investigate the problem of automatic music genre classification in the field of M...
We consider the genre classification problem in Music Information Retrieval and report our initial i...
In the field of artificial intelligence, supervised machine learning enables us to try to develop au...
Music classification is a key ingredient for electronic music distribution. Because of the lack of s...
Music genre meta-data is of paramount importance for the organization of music reposito-ries. People...
Abstract. Much work is focused upon music genre recognition (MGR) from audio recordings, symbolic da...
In this letter, we present different approaches for music genre classification. The proposed techniq...
Given the huge size of music collections available on the Web, automatic genre classification is cru...
This paper presents a non-conventional approach for the automatic music genre classification problem...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
With the high increase in the availability of digital music, it has become of interest to automatica...
[[abstract]]With the popularity of multimedia applications, a large amount of music data has been ac...
Recently many research has been conducted to retrieve pertinent parameters and adequate models for a...
Music analysis, i.e. using computers to analyze fully notated pieces of musical score, is one of the...