Hybrid Method for Automatic Music Labeling

Irapuru Florido, R. T. Raittz
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Abstract

Automatic music labeling on large-scale bases is a premise to provide systems of music recommendation, importante subject in digital world, demanding countless research in music information retrieval field. Although there are large-scale musical bases, such as Million Song Dataset (MSD), that have lowlevel label signal audio, descendant from audio signal, they are weakly labelled, that is, songs labels may be incomplete at a high level regarding emotion, vocals and instrument. This work aims to present the Music Label Miner (MLM), a hybrid method based on grouping, genetic algorithm and statistical correlation, which generates mappings and ossible inferences of high-level labels based on audio signal, through the relationship of a Large-scale base, MSD, with a lower-dimensional Ground Truth reference base. By applying the proposed method, it will be possible to label songs automatically, which contain only low-level labels and, by the models generated from the method, reach high-level labels. The method is composed by: (i) selection and preprocessing of MSD high and low level data, (ii) reference data set called CAL500exp, (iii) MSD data grouping, (iv) CAL500exp vectorization, (v) relationship of vectorized and grouping datasets, (vi) statistical correlation, (vii) mapping, (viii) visualization of selected data characteristics, (ix) generation of models and (x) inference of high and low-level labels.
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音乐自动标注的混合方法
大规模的音乐自动标注是提供音乐推荐系统的前提,音乐推荐是数字世界的重要课题,需要音乐信息检索领域进行无数的研究。尽管存在大型音乐基地,如百万歌曲数据集(MSD),具有低级别标签信号音频,音频信号的后代,但它们是弱标记的,即歌曲标签可能在情感,人声和乐器的高级别上是不完整的。这项工作旨在提出音乐标签挖掘器(MLM),这是一种基于分组、遗传算法和统计相关性的混合方法,它通过大规模基础MSD与较低维度的Ground Truth参考基础的关系,生成基于音频信号的高级别标签的映射和可能的推断。通过应用所提出的方法,可以自动标记歌曲,其中只包含低级标签,并且通过从该方法生成的模型,可以达到高级标签。该方法包括:(i) MSD高、低层数据的选择和预处理,(ii) CAL500exp参考数据集,(iii) MSD数据分组,(iv) CAL500exp向量化,(v)向量化和分组数据集的关系,(vi)统计相关性,(vii)映射,(viii)所选数据特征的可视化,(ix)模型的生成,(x)高、低层标签的推断。
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