4.7 Article

Unsupervised Music Structure Annotation by Time Series Structure Features and Segment Similarity

Journal

IEEE TRANSACTIONS ON MULTIMEDIA
Volume 16, Issue 5, Pages 1229-1240

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2014.2310701

Keywords

Music information retrieval; Time series analysis; Unsupervised learning; Content-based retrieval

Funding

  1. EU Feder
  2. Cluster of Excellence on Multimodal Computing and Interaction at Saarland University
  3. DFG MU [2682/5-1]
  4. [ICT -2011-8-318770]
  5. [2009-SGR-1434]
  6. [JAEDOC069/2010]

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Automatically inferring the structural properties of raw multimedia documents is essential in today's digitized society. Given its hierarchical and multi-faceted organization, musical pieces represent a challenge for current computational systems. In this article, we present a novel approach to music structure annotation based on the combination of structure features with time series similarity. Structure features encapsulate both local and global properties of a time series, and allow us to detect boundaries between homogeneous, novel, or repeated segments. Time series similarity is used to identify equivalent segments, corresponding to musically meaningful parts. Extensive tests with a total of five benchmark music collections and seven different human annotations show that the proposed approach is robust to different ground truth choices and parameter settings. Moreover, we see that it outperforms previous approaches evaluated under the same framework.

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