利用采样乐器合成数据改善合唱音乐分离

K. Chen, Hao-Wen Dong, Yi Luo, Julian McAuley, Taylor Berg-Kirkpatrick, M. Puckette, S. Dubnov
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引用次数: 3

摘要

合唱音乐分离是指从混合音频中提取声部(如女高音、女低音、男高音和男低音)音轨的任务。由于版权问题和数据集收集困难,以前的工作只能在几分钟的合唱音乐数据上训练和评估模型,因此缺乏数据集阻碍了对这一主题的研究。在本文中,我们研究了将合成训练数据用于真实合唱音乐的源分离任务。我们做出了三个贡献:首先,我们提供了一个自动化的管道,用于在可控的乐器表现力选项中从采样的乐器插件中合成合唱音乐数据。这将从JSB Chorales dataset中生成8.2小时长的合唱音乐数据集,并且可以轻松地合成其他数据。其次,我们进行了一个实验,在现有的合唱音乐分离数据集上评估多个分离模型。据我们所知,这是第一个综合评价合唱音乐分离的实验。第三,实验表明,合成的合唱数据具有足够的质量,可以提高模型在真实合唱音乐数据集上的性能。这为合唱音乐分离研究提供了额外的实验统计和数据支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Choral Music Separation through Expressive Synthesized Data from Sampled Instruments
Choral music separation refers to the task of extracting tracks of voice parts (e.g., soprano, alto, tenor, and bass) from mixed audio. The lack of datasets has impeded research on this topic as previous work has only been able to train and evaluate models on a few minutes of choral music data due to copyright issues and dataset collection difficulties. In this paper, we investigate the use of synthesized training data for the source separation task on real choral music. We make three contributions: first, we provide an automated pipeline for synthesizing choral music data from sampled instrument plugins within controllable options for instrument expressiveness. This produces an 8.2-hour-long choral music dataset from the JSB Chorales Dataset and one can easily synthesize additional data. Second, we conduct an experiment to evaluate multiple separation models on available choral music separation datasets from previous work. To the best of our knowledge, this is the first experiment to comprehensively evaluate choral music separation. Third, experiments demonstrate that the synthesized choral data is of sufficient quality to improve the model's performance on real choral music datasets. This provides additional experimental statistics and data support for the choral music separation study.
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