Zipf, neural networks and SVM for musical genre classification

E. Dellandréa, Hadi Harb, Liming Chen
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引用次数: 7

Abstract

We present in this paper audio classification schemes that we have experimented in order to perform musical genres classification. This type of classification is a part of a more general domain which is automatic semantic audio classification, the applications of which are more and more numerous in such fields as musical or multimedia databases indexing. Experimental results have shown that the feature set we have developed, based on Zipf laws, associated with a combination of classifiers organized hierarchically according to classes taxonomy allow an efficient classification
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Zipf,神经网络和支持向量机的音乐类型分类
在本文中,我们提出了我们已经实验的音频分类方案,以便进行音乐类型分类。这种类型的分类是语义音频自动分类这一更广泛领域的一部分,在音乐或多媒体数据库索引等领域的应用越来越多。实验结果表明,我们基于Zipf定律开发的特征集与根据类分类法分层组织的分类器组合相关联,可以实现有效的分类
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