Publication | Closed Access
Towards musical query-by-semantic-description using the CAL500 data set
134
Citations
26
References
2007
Year
Unknown Venue
MusicComputational MusicologyEngineeringMachine LearningSemantic QuerySemantic WebMusicologyText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningPattern RecognitionMusic RetrievalSemantic LearningKnowledge DiscoveryAudio RetrievalComputer ScienceAudio MiningMusic ClassificationArtsCal500 Data SetMultimedia Search
Query-by-semantic-description (QBSD)is a natural paradigm for retrieving content from large databases of music. A major impediment to the development of good QBSD systems for music information retrieval has been the lack of a cleanly-labeled, publicly-available, heterogeneous data set of songs and associated annotations. We have collected the Computer Audition Lab 500-song (CAL500) data set by having humans listen to and annotate songs using a survey designed to capture 'semantic associations' between music and words. We adapt the supervised multi-class labeling (SML) model, which has shown good performance on the task of image retrieval, and use the CAL500 data to learn a model for music retrieval. The model parameters are estimated using the weighted mixture hierarchies expectation-maximization algorithm which has been specifically designed to handle real-valued semantic association between words and songs, rather than binary class labels. The output of the SML model, a vector of class-conditional probabilities, can be interpreted as a semantic multinomial distribution over a vocabulary. By also representing a semantic query as a query multinomial distribution, we can quickly rank order the songs in a database based on the Kullback-Leibler divergence between the query multinomial and each song's semantic multinomial. Qualitative and quantitative results demonstrate that our SML model can both annotate a novel song with meaningful words and retrieve relevant songs given a multi-word, text-based query.
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