Singer Identity Representation Learning Using Self-Supervised Techniques

Bernardo Torres, S. Lattner, Gaël Richard
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Abstract

Significant strides have been made in creating voice identity representations using speech data. However, the same level of progress has not been achieved for singing voices. To bridge this gap, we suggest a framework for training singer identity encoders to extract representations suitable for various singing-related tasks, such as singing voice similarity and synthesis. We explore different self-supervised learning techniques on a large collection of isolated vocal tracks and apply data augmentations during training to ensure that the representations are invariant to pitch and content variations. We evaluate the quality of the resulting representations on singer similarity and identification tasks across multiple datasets, with a particular emphasis on out-of-domain generalization. Our proposed framework produces high-quality embeddings that outperform both speaker verification and wav2vec 2.0 pre-trained baselines on singing voice while operating at 44.1 kHz. We release our code and trained models to facilitate further research on singing voice and related areas.
利用自我监督技术学习歌手身份表征
在利用语音数据创建语音身份表征方面已经取得了长足的进步。然而,在歌唱声音方面还没有取得同样的进展。为了弥补这一差距,我们提出了一个训练歌手身份编码器的框架,以提取适合各种歌唱相关任务(如歌声相似性和合成)的表征。我们在大量独立声轨上探索了不同的自监督学习技术,并在训练过程中应用了数据增强技术,以确保表征不受音高和内容变化的影响。我们在多个数据集的歌手相似性和识别任务中评估了所生成表征的质量,并特别强调了域外泛化。我们提出的框架能产生高质量的嵌入,在 44.1 kHz 的工作频率下,其表现优于说话人验证和 wav2vec 2.0 预训练基线。我们将发布我们的代码和经过训练的模型,以促进歌唱语音及相关领域的进一步研究。
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