Contrastive Learning-Based Audio to Lyrics Alignment for Multiple Languages

Simon Durand, D. Stoller, Sebastian Ewert
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引用次数: 4

Abstract

Lyrics alignment gained considerable attention in recent years. State-of-the-art systems either re-use established speech recognition toolkits, or design end-to-end solutions involving a Connectionist Temporal Classification (CTC) loss. However, both approaches suffer from specific weaknesses: toolkits are known for their complexity, and CTC systems use a loss designed for transcription which can limit alignment accuracy. In this paper, we use instead a contrastive learning procedure that derives cross-modal embeddings linking the audio and text domains. This way, we obtain a novel system that is simple to train end-to-end, can make use of weakly annotated training data, jointly learns a powerful text model, and is tailored to alignment. The system is not only the first to yield an average absolute error below 0.2 seconds on the standard Jamendo dataset but it is also robust to other languages, even when trained on English data only. Finally, we release word-level alignments for the JamendoLyrics Multi-Lang dataset.
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基于对比学习的多语言音频与歌词对齐
歌词对齐近年来获得了相当大的关注。最先进的系统要么重用已建立的语音识别工具包,要么设计涉及连接时间分类(CTC)损失的端到端解决方案。然而,这两种方法都有特定的弱点:工具箱以其复杂性而闻名,CTC系统使用为转录设计的损失,这可能会限制比对准确性。在本文中,我们使用了一种对比学习过程,该过程派生出连接音频和文本域的跨模态嵌入。通过这种方式,我们得到了一个简单的端到端训练系统,可以利用弱标注的训练数据,共同学习一个强大的文本模型,并为对齐量身定制。该系统不仅是第一个在标准Jamendo数据集上产生平均绝对误差低于0.2秒的系统,而且对其他语言也很健壮,即使只在英语数据上进行训练。最后,我们发布了JamendoLyrics Multi-Lang数据集的词级对齐。
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