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Automatic Music Classification and Summarization

journal contribution
posted on 2024-11-01, 06:20 authored by C Xu, Namunu Maddage, X Shao
Automatic music classification and summarization are very useful to music indexing, content-based music retrieval and on-line music distribution, but it is a challenge to extract the most common and salient themes from unstructured raw music data. In this paper, we propose effective algorithms to automatically classify and summarize music content. Support vector machines are applied to classify music into pure music and vocal music by learning from training data. For pure music and vocal music, a number of features are extracted to characterize the music content, respectively. Based on calculated features, a clustering algorithm is applied to structure the music content. Finally, a music summary is created based on the clustering results and domain knowledge related to pure and vocal music. Support vector machine learning shows a better performance in music classification than traditional Euclidean distance methods and hidden Markov model methods. Listening tests are conducted to evaluate the quality of summarization. The experiments on different genres of pure and vocal music illustrate the results of summarization are significant and effective.

History

Journal

IEEE Transaction on Speech and Audio Processing

Volume

13

Issue

3

Start page

441

End page

450

Total pages

10

Publisher

IEEE

Place published

United States

Language

English

Former Identifier

2006013339

Esploro creation date

2020-06-22

Fedora creation date

2010-12-06

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