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Using duration models to reduce fragmentation in audio segmentation
Authors:Samer Abdallah  Mark Sandler  Christophe Rhodes  Michael Casey
Affiliation:(1) Queen Mary, University of London, Mile End Road, London, E1 4NS;(2) Goldsmiths College, University of London, New Cross, London, SE14 6NW
Abstract:We investigate explicit segment duration models in addressing the problem of fragmentation in musical audio segmentation. The resulting probabilistic models are optimised using Markov Chain Monte Carlo methods; in particular, we introduce a modification to Wolff’s algorithm to make it applicable to a segment classification model with an arbitrary duration prior. We apply this to a collection of pop songs, and show experimentally that the generated segmentations suffer much less from fragmentation than those produced by segmentation algorithms based on clustering, and are closer to an expert listener’s annotations, as evaluated by two different performance measures. Editor: Gerhard Widmer
Keywords:Segmentation  Duration prior  MCMC  Gibbs sampling  Wolff algorithm
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