In this work, we focus on automatically classifying music by mood. For this purpose, we propose computational models using information extracted from the audio signal. The foundations of such algorithms are based on techniques from signal processing, machine learning and information retrieval. First, by studying the tagging behavior of a music social network, we find a model to represent mood. Then, we propose a method for automatic music mood classification. We analyze the contributions of audio descriptors and how their values are related to the observed mood. We also propose a multimodal version using lyrics, contributing to the field of text retrieval. Moreover, after showing the relation between mood and genre, we present a new approac...
In this paper, a method is proposed to detect the emotion of a song based on its lyrical and audio f...
Music is the effective communication mediumamong people. Studying music mood can help inmusic unders...
Very large online music databases have recently been created by vendors, but they generally lack con...
In this work, we focus on automatically classifying music by mood. For this purpose, we propose comp...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Comunicació presentada a: International Society for Music Information Retrieval Conference celebrat ...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
Music is one of the basic human needs for recreation and entertainment. As song files are digitalize...
Music emotion is a crucial component in the field of multimedia database retrieval and computational...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
With high popularity of audio files and increasing size of data storages devices, organizing audio f...
Understanding the mood of music holds great potential for recommendation and genre identification pr...
In this paper, a method is proposed to detect the emotion of a song based on its lyrical and audio f...
Music is the effective communication mediumamong people. Studying music mood can help inmusic unders...
Very large online music databases have recently been created by vendors, but they generally lack con...
In this work, we focus on automatically classifying music by mood. For this purpose, we propose comp...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Comunicació presentada a: International Society for Music Information Retrieval Conference celebrat ...
In the context of content analysis for indexing and retrieval, a method for creating automatic music...
Music is one of the basic human needs for recreation and entertainment. As song files are digitalize...
Music emotion is a crucial component in the field of multimedia database retrieval and computational...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
With high popularity of audio files and increasing size of data storages devices, organizing audio f...
Understanding the mood of music holds great potential for recommendation and genre identification pr...
In this paper, a method is proposed to detect the emotion of a song based on its lyrical and audio f...
Music is the effective communication mediumamong people. Studying music mood can help inmusic unders...
Very large online music databases have recently been created by vendors, but they generally lack con...