使用高阶统计的音乐类型分类

N. Avcu, D. Kuntalp, v.A. Alpkocak
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引用次数: 1

摘要

在这项研究中,我们考察了音质特征的高阶统计量对提高类型分类性能的影响。可以看出,在本研究中提取的特征的一阶和二阶统计量不像特征的三阶和四阶统计量那样具有判别性。为了设计一个可以在未来研究中实时应用的分类器,我们随机取3秒长的片段进行分类。在3个流派的225首歌曲中,ISO用于训练,其中45首用于测试。使用不同的训练集和测试集创建的五个不同的列表用于减少结果对测试集的依赖性,同时增加验证数据的数量。将验证试验结果的平均值与使用相同数据集的基于MIDI格式的同类工作的结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Musical Genre Classification Using Higher-Order Statistics
In this study, we examine the effects of higher order statistics of timbral features to improve performance of genre classification. It was seen that the first and second order statistics of the features extracted, in this research, is not as discriminative as the third and forth order statistics of the features. For the purpose of designing a classifier, which could be used for real time applications in future studies, randomly taken 3 second-long segments are used for classification. Out of 225 songs from 3 genres, ISO of them are used for training and 45 of them are used for testing. Five different lists that are created using different train and test sets are used to reduce the dependency of the results to the test set while increasing the number of validation data. Average values of validation test results are compared with the results of the similar works, which are based on MIDI format, using the same data set.
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