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Blind monaural singing voice separation using rank-1 constraint robust principal component analysis and vocal activity detection

机译:使用Rank-1约束强大的主成分分析和声乐活动检测盲目歌唱语音分离

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摘要

In this paper, a novel blind separation method for monaural singing voice based on an extension of robust principal component analysis (RPCA) using a rank-1 constraint called Constraint RPCA (CRPCA) is proposed. Although the conventional RPCA is an effective method to separate singing voice from the mixed audio signal, it fails when one singular value (e.g., drum) is much larger than all others (e.g., other accompanying instruments). The proposed CRPCA method utilizes rank-1 constraint minimization of singular values in RPCA instead of minimizing the nuclear norm, which not only provides a solution robust to large dynamic range differences among instruments but also reduces the computation complexity. Further quality improvement is achieved by converting CRPCA to an ideal binary masking, combining it with harmonic masking to create a coalescent masking, and finally, combining with a vocal activity detection. Evaluation results on ccMixter and DSD100 datasets show that the proposed method achieves better separation performance than the previous methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于使用秩1约束的鲁棒主成分分析(RPCA)扩展的单型歌唱语音的新型盲分离方法是由称为约束RPCA(CRPCA)的延伸。尽管传统的RPCA是将来自混合音频信号分开的有效方法,但是当一个单数值(例如,鼓)远大于所有其他(例如,其他随附的仪器)时,它失败。所提出的CRPCA方法利用RPCA中的奇异值的秩1约束最小化,而不是最小化核规范,这不仅为仪器之间的大动态范围差提供了稳健而且还降低了计算复杂性。通过将CRPCA转换为理想的二进制掩模来实现进一步的质量改进,使其与谐波掩模相结合以产生聚结掩模,最后,结合声带活动检测。 CCMixter和DSD100数据集的评估结果表明,该方法比以前的方法实现了更好的分离性能。 (c)2019 Elsevier B.v.保留所有权利。

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