基于重复模式提取技术和鲁棒主成分分析的音乐/歌唱声音分离

Sait Melih Doğan, Özgül Salor
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引用次数: 4

摘要

把一段音乐的人声部分和背景部分分开是一项非常困难的任务。在文献中,将声部和背景部分从音乐作品中分离出来的过程通常利用音乐重复的特征。重复模式提取技术(REPET)和鲁棒主成分分析(RPCA)方法都是利用背景音乐的重复特征将音乐片段分离为人声音乐和背景音乐。为了提高REPET算法的分离性能,本文将REPET算法与RPCA算法相结合进行了研究。为了比较所提出的方法与REPET和RPCA的性能,对MIR-1K数据集中的选定音轨进行了两种不同的测试。实验结果表明,该方法的性能明显优于其他两种方法。
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Music/singing voice separation based on repeating pattern extraction technique and robust principal component analysis
Separating the vocal and background parts of a piece of music is a very difficult task. In the literature, the process of separating vocal and background parts from musical pieces usually utilizes music repetition feature. In both Repeating Pattern Extraction Technique (REPET) and Robust Principal Component Analysis (RPCA) methods, which are among the leading studies in this field, musical pieces are separated as vocal and background music by using repetition feature of the background music. In this paper, a research study is carried out combining REPET and RPCA algorithms in order to improve the separation performance of the REPET algorithm. In order to compare performances of the proposed method with REPET and RPCA, two different tests have been carried out with selected audio tracks from the MIR-1K dataset. It has been shown by both tests that the performance of the proposed method is much better than other two methods.
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