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Window selection for accurate music source separation using REPET

机译:使用REPEAT进行窗口选择以准确分离音乐源

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Separating music into vocal and non-vocal (back ground music) components is a challenging task, though it has a wide range of applications. The repeating rhythmic and beat property of the music, along with other accompaniments, has been leveraged in the `Repeated pattern extraction technique' (REPET), for separating a song into its vocal and non-vocal content. The REPET method involves measuring the repeating period of the music, deriving a model using it, and creating a time-frequency mask for separating the background (music) from the original mixture, in order to finally obtain the non-repeating vocal (source) content. Selecting an appropriate windowing function is critical for achieving the high quality of music-source separation in this method. In this paper, we examine five different windowing functions such as rectangular, flat-top, Blackman and Hanning window along with the Hamming window that was used originally in REPET method. Experiments are conducted on different types of music excerpts, using these five different windowing functions in the REPET method. Performance evaluation of the quality of music-source separation is carried out using `Analysis of Variation' (ANOVA) of `Signal to Interference Ratio' (SIR). The results indicate that no one particular window can be considered as completely reliable, for the accurate separation of a music mixture. However, Hamming window for extracting the background content, and Blackman window for extracting the foreground (vocal) content, give relatively better results.
机译:将音乐分为有声和无声(背景音乐)部分是一项具有挑战性的任务,尽管它具有广泛的应用范围。音乐的重复节奏和节拍属性以及其他伴奏已在“重复模式提取技术”(REPET)中加以利用,以将歌曲分为有声和无声内容。 REPET方法涉及测量音乐的重复周期,使用它来推导模型,并创建一个时频蒙版以将背景(音乐)与原始混音分开,以便最终获得非重复的人声(源)。内容。选择适当的窗口功能对于以这种方法实现高质量的音乐源分离至关重要。在本文中,我们研究了五个不同的开窗函数,例如矩形,平顶,布莱克曼和汉宁窗,以及最初在REPET方法中使用的汉明窗。使用REPET方法中的这五个不同的窗口功能,对不同类型的音乐摘录进行了实验。音乐源分离质量的性能评估是使用“信号干扰比”(SIR)的“变异分析”(ANOVA)进行的。结果表明,没有一个特定的窗口可以被认为是完全可靠的,可以准确地分离出音乐作品。但是,用于提取背景内容的汉明窗口和用于提取前景(人声)内容的布莱克曼窗口给出了相对较好的结果。

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