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Feature Selection in Automatic Music Genre Classification

机译:音乐类型自动分类中的特征选择

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This paper presents the results of the application of a feature selection procedure to an automatic music genre classification system. The classification system is based on the use of multiple feature vectors and an ensemble approach, according to time and space decomposition strategies. Feature vectors are extracted from music segments from the beginning, middle and end of the original music signal (time decomposition). Despite being music genre classification a multi-class problem, we accomplish the task using a combination of binary classifiers, whose results are merged in order to produce the final music genre label (space decomposition). As individual classifiers several machine learning algorithms were employed: Naive-Bayes, Decision Trees, Support Vector Machines and Multi-Layer Perceptron Neural Nets. Experiments were carried out on a novel dataset called Latin Music Database, which contains 3,227 music pieces categorized in 10 musical genres. The experimental results show that the employed features have different importance according to the part of the music signal from where the feature vectors were extracted. Furthermore, the ensemble approach provides better results than the individual segments in most cases.
机译:本文介绍了将特征选择程序应用于自动音乐体裁分类系统的结果。根据时间和空间分解策略,分类系统基于多个特征向量和整体方法的使用。从原始音乐信号的开始,中间和结尾从音乐片段中提取特征向量(时间分解)。尽管音乐流派分类是一个多类问题,但我们还是使用二进制分类器的组合来完成任务,将其结果合并以产生最终的音乐流派标签(空间分解)。作为单独的分类器,使用了几种机器学习算法:朴素贝叶斯,决策树,支持向量机和多层感知器神经网络。实验是在一个名为“拉丁音乐数据库”的新颖数据集上进行的,该数据库包含3227种音乐作品,分为10种音乐流派。实验结果表明,根据从特征向量中提取出的音乐信号部分,所采用的特征具有不同的重要性。此外,在大多数情况下,集成方法提供的效果要优于单个细分。

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