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Mixing-Specific Data Augmentation Techniques for Improved Blind Violin/Piano Source Separation

机译:改进盲盲小提琴/钢琴源分离的混合特定的数据增强技术

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Blind music source separation has been a popular and active subject of research in both the music information retrieval and signal processing communities. To counter the lack of available multi-track data for supervised model training, a data augmentation method that creates artificial mixtures by combining tracks from different songs has been shown useful in recent works. Following this light, we examine further in this paper extended data augmentation methods that consider more sophisticated mixing settings employed in the modern music production routine, the relationship between the tracks to be combined, and factors of silence. As a case study, we consider the separation of violin and piano tracks in a violin piano ensemble, evaluating the performance in terms of common metrics, namely SDR, SIR, and SAR. In addition to examining the effectiveness of these new data augmentation methods, we also study the influence of the amount of training data. Our evaluation shows that the proposed mixing-specific data augmentation methods can help improve the performance of a deep learning-based model for source separation, especially in the case of small training data.
机译:盲音乐源分离是音乐信息检索和信号处理社区中的流行和有效的研究。为了抵消缺乏用于监督模型培训的可用多轨数据,通过在最近的作品中显示了通过组合来自不同歌曲的曲目来创造人工混合物的数据增强方法。在此光之后,我们在本文中进一步检查了在现代音乐生产程序中使用的更复杂的混合设置,轨道之间的关系以及沉默的因素的延长数据增强方法。作为案例研究,我们考虑在小提琴钢琴集合中分离小提琴和钢琴轨道,评估常见度量,即SDR,SIR和SAR方面的表现。除了检查这些新数据增强方法的有效性外,还研究培训数据量的影响。我们的评价表明,所提出的混合特定数据增强方法可以帮助提高基于深度学习的源分离模型的性能,特别是在小型训练数据的情况下。

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