Multimedia Tools and Applications, volume 78, issue 9, pages 11563-11584
Regional classification of Chinese folk songs based on CRF model
Juan Li
1
,
Jing Luo
2
,
Jianhang Ding
2
,
Xi Zhao
2
,
Xinyu Yang
2
Publication type: Journal Article
Publication date: 2018-09-27
Journal:
Multimedia Tools and Applications
scimago Q1
SJR: 0.801
CiteScore: 7.2
Impact factor: 3
ISSN: 13807501, 15737721
Hardware and Architecture
Computer Networks and Communications
Software
Media Technology
Abstract
Music regional classification, which is an important branch of music automatic classification, aims at classifying folk songs according to different regional style. Chinese folk songs have developed various regional musical styles in the process of its evolution. Regional classification of Chinese folk songs can promote the development of music recommendation systems which recommending proper style of music to users and improve the efficiency of the music retrieval system. However, the accuracy of existing music regional classification systems is not high enough, because most methods do not consider temporal characteristics of music for both features extraction and classification. In this paper, we proposed an approach based on conditional random field (CRF) which can fully take advantage of the temporal characteristics of musical audio features for music regional classification. Considering the continuity, high dimensionality and large size of the audio feature data, we employed two ways to calculate the label sequence of musical audio features in CRF, which are Gaussian Mixture Model (GMM) and Restricted Boltzmann Machine (RBM). The experimental results demonstrated that the proposed method based on CRF-RBM outperforms other existing music regional classifiers with the best accuracy of 84.71% on Chinese folk songs datasets. Besides, when the proposed methods were applied to the Greek folk songs dataset, the CRF-RBM model also performs the best.
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