Transfer Learning of Artist Group Factors to Musical Genre Classification

Jaehun Kim, Minz Won, Xavier Serra, Cynthia C. S. Liem
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引用次数: 15

Abstract

The automated recognition of music genres from audio information is a challenging problem, as genre labels are subjective and noisy. Artist labels are less subjective and less noisy, while certain artists may relate more strongly to certain genres. At the same time, at prediction time, it is not guaranteed that artist labels are available for a given audio segment. Therefore, in this work, we propose to apply the transfer learning framework, learning artist-related information which will be used at inference time for genre classification. We consider different types of artist-related information, expressed through artist group factors, which will allow for more efficient learning and stronger robustness to potential label noise. Furthermore, we investigate how to achieve the highest validation accuracy on the given FMA dataset, by experimenting with various kinds of transfer methods, including single-task transfer, multi-task transfer and finally multi-task learning.
艺术家群体因素向音乐类型分类的迁移学习
从音频信息中自动识别音乐类型是一个具有挑战性的问题,因为类型标签是主观的和嘈杂的。艺术家标签不那么主观,也不那么嘈杂,而某些艺术家可能更倾向于某些流派。同时,在预测时,不能保证给定音频片段的艺术家标签可用。因此,在这项工作中,我们建议应用迁移学习框架,学习艺术家相关的信息,这些信息将在推理时用于类型分类。我们考虑不同类型的艺术家相关信息,通过艺术家群体因素表达,这将允许更有效的学习和对潜在标签噪声更强的鲁棒性。此外,我们通过实验各种迁移方法,包括单任务迁移、多任务迁移和多任务学习,研究了如何在给定的FMA数据集上实现最高的验证精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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