在嘈杂的商业音乐上实现健壮的音乐源分离

Chang-Bin Jeon, Kyogu Lee
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引用次数: 4

摘要

与过去相比,如今的商业音乐具有极高的响度和严重压缩的动态范围。然而,在音乐源分离中,这些特征没有得到充分的考虑,导致实验室和现实世界之间的域不匹配。在本文中,我们证实了这种域不匹配会对音乐源分离网络的性能产生负面影响。为此,我们首先通过模仿音乐的掌握过程,创建了域外评价数据集musdb-L和XL。然后,我们定量地验证了最先进算法的性能在我们的数据集中显着恶化。最后,我们提出了LimitAug数据增强方法,该方法在训练数据采样过程中使用在线限制器来减少域不匹配。我们证实,它不仅减轻了域外数据集的性能下降,而且在域内数据上也有更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards robust music source separation on loud commercial music
Nowadays, commercial music has extreme loudness and heavily compressed dynamic range compared to the past. Yet, in music source separation, these characteristics have not been thoroughly considered, resulting in the domain mismatch between the laboratory and the real world. In this paper, we confirmed that this domain mismatch negatively affect the performance of the music source separation networks. To this end, we first created the out-of-domain evaluation datasets, musdb-L and XL, by mimicking the music mastering process. Then, we quantitatively verify that the performance of the state-of-the-art algorithms significantly deteriorated in our datasets. Lastly, we proposed LimitAug data augmentation method to reduce the domain mismatch, which utilizes an online limiter during the training data sampling process. We confirmed that it not only alleviates the performance degradation on our out-of-domain datasets, but also results in higher performance on in-domain data.
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