An Effective Framework for Speech and Music Segregation

Sidra Sajid, A. Javed, Aun Irtaza
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Abstract

Speech and music segregation from a single channel is a challenging task due to background interference and intermingled signals of voice and music channels. It is of immense importance due to its utility in wide range of applications such as music information retrieval, singer identification, lyrics recognition and alignment. This paper presents an effective method for speech and music segregation. Considering the repeating nature of music, we first detect the local repeating structures in the signal using a locally defined window for each segment. After detecting the repeating structure, we extract them and perform separation using a soft time-frequency mask. We apply an ideal binary mask to enhance the speech and music intelligibility. We evaluated the proposed method on the mixtures set at -5 dB, 0 dB, 5 dB from Multimedia Information Retrieval1000 clips (MIR-1K) dataset. Experimental results demonstrate that the proposed method for speech and music segregation outperforms the existing state-of-the-art methods in terms of Global-Normalized-Signal-to-Distortion Ratio (GNSDR) values.
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语言和音乐隔离的有效框架
由于背景干扰和语音和音乐信道的混杂信号,从单个信道中分离语音和音乐是一项具有挑战性的任务。由于其在音乐信息检索、歌手识别、歌词识别和对齐等方面的广泛应用,它具有巨大的重要性。本文提出了一种有效的语音和音乐分离方法。考虑到音乐的重复性质,我们首先使用每个片段的局部定义窗口来检测信号中的局部重复结构。在检测到重复结构后,我们提取它们并使用软时频掩模进行分离。我们采用理想的二值掩模来提高语音和音乐的可理解性。我们对多媒体信息检索1000个片段(MIR-1K)数据集中-5 dB、0 dB和5 dB的混合设置进行了评估。实验结果表明,所提出的语音和音乐分离方法在全局归一化信失真比(GNSDR)值方面优于现有的最先进的方法。
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