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Music Genre Classificatio Using Novel Song Structure Derived Features

机译:使用新颖歌曲结构衍生特征的音乐流派分类

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Rapid grow of the digital music content and service providers worldwide everyday increases the importance of music genre classification. Most genre classification still relies heavily on human effort. Signal processing combined with machine learning methods aims to solve this problem autonomously for decades. In this work, we introduce novel high-level features derived from song structures and examine their performance through both CNN and a Voting Classifier. Results show that these features alone increases the classification accuracy significantly compared to random prediction and has potential of use in combination with other various features.
机译:全球数字音乐内容和服务提供商的快速增长每天都在增加音乐流派分类的重要性。大多数类型的分类仍然严重依赖于人类的努力。信号处理与机器学习方法相结合旨在数十年来自主解决这一问题。在这项工作中,我们介绍了从歌曲结构派生的新颖高级功能,并通过CNN和投票分类器检查了它们的性能。结果表明,与随机预测相比,这些功能单独可以显着提高分类准确性,并具有与其他各种功能结合使用的潜力。

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