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A music genre classifier combining timbre, rhythm and tempo models

机译:结合音色,节奏和速度模型的音乐流派分类器

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The changing music landscape demands new ways of searching, organizing and recommending music to consumers. Content-based music similarity estimation offers a robust solution using a set of audio features. In this paper, we describe the feature extractors to model timbre, rhythm and tempo. We discuss the corresponding feature similarity relations and how the distance measures are combined to quantify music similarity. The proposed system was submitted to 2011 Music Information Retrieval Evaluation eXchange (MIREX) Audio Music Similarity task for validation. Both objective and subjective tests show that the systems achieved an average genre classification of accuracy of 50% across ten genres. Furthermore, the genre classification confusion matrix revealed that the system works best on rap, hiphop and related types of music.
机译:不断变化的音乐环境要求寻找,组织和向消费者推荐音乐的新方式。基于内容的音乐相似性估计提供了使用一组音频功能的可靠解决方案。在本文中,我们描述了特征提取器来建模音色,节奏和节奏。我们讨论了相应的特征相似关系,以及如何结合距离度量来量化音乐相似度。拟议的系统已提交给2011音乐信息检索评估交换(MIREX)音频音乐相似性任务进行验证。客观测试和主观测试均表明,该系统在十种类型中均达到了50%的准确度的平均类型分类。此外,流派分类混淆矩阵显示该系统在说唱,嘻哈音乐和相关类型的音乐上效果最佳。

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