A music similarity function based on probabilistic linear discriminant analysis for cover song identification

JOURNAL OF THE ACOUSTICAL SOCIETY OF KOREA(2022)

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摘要
Computing music similarity is an indispensable component in developing music search service. This paper focuses on learning a music similarity function in order to boost cover song identification performance. By using the probabilistic linear discriminant analysis, we construct a latent music space where the distances between cover song pairs reduces while the distances between the non-cover song pairs increases. We derive a music similarity function by testing hypothesis, whether two songs share the same latent variable or not, using the probabilistic models with the assumption that observed music features are generated from the learned latent music space. Experimental results performed on two cover music datasets show that the proposed music similarity improves the cover song identification performance.
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关键词
Cover song identification,Music similarity,Probabilistic Linear Discriminant Analysis (PLDA),Latent variable
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