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Boosting Classifiers for Music Genre Classification

机译:促进音乐流派分类的分类器

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摘要

Music genre classification is an essential tool for music information retrieval systems and it has been finding critical applications in various media platforms. Two important problems of the automatic music genre classification are feature extraction and classifier design. This paper investigates discriminative boosting of classifiers to improve the automatic music genre classification performance. Two classifier structures, boosting of the Gaussian mixture model based classifiers and classifiers that are using the inter-genre similarity information, are proposed. The first classifier structure presents a novel extension to the maximum-likelihood based training of the Gaussian mixtures to integrate GMM classifier into boosting architecture. In the second classifier structure, the boosting idea is modified to better model the inter-genre similarity information over the mis-classified feature population. Once the inter-genre similarities are modeled, elimination of the inter-genre similarities reduces the inter-genre confusion and improves the identification rates. A hierarchical auto-clustering classifier scheme is integrated into the inter-genre similarity modeling. Experimental results with promising classification improvements are provided.
机译:音乐体裁分类是音乐信息检索系统必不可少的工具,并且已经在各种媒体平台中找到了关键应用。音乐类型自动分类的两个重要问题是特征提取和分类器设计。本文研究了分类器的判别增强,以提高自动音乐体裁分类性能。提出了两种分类器结构,即基于高斯混合模型的分类器和使用跨类相似性信息的分类器的增强。第一个分类器结构为高斯混合的基于最大似然性的训练提出了一种新颖的扩展,以将GMM分类器集成到增强架构中。在第二分类器结构中,改进了提振思想,以更好地对错误分类的特征种群上的跨类相似性信息进行建模。一旦对种间相似性进行建模,消除种间相似性就可以减少种间混淆,并提高识别率。类别间相似性建模中集成了分层自动聚类分类器方案。提供了有希望的分类改进的实验结果。

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