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引用次数: 3
摘要
歌曲在娱乐中扮演着重要的角色。音频信号分离系统应该能够识别不同的音频信号,如语音、音乐和背景噪声。在一首歌中,歌声提供了有用的信息。一种用于衰减或移除音乐伴奏的自动歌唱声音分离系统。歌声成为吸引人的焦点。歌唱是通过人的声音产生与音乐相关的声音。提出了一种基于鲁棒主成分分析(RPCA)的歌唱声音与音乐背景分离算法。该方法是求解低秩稀疏矩阵的矩阵分解方法。歌唱的声音被有效地从音乐伴奏中分离出来。算法的评估结果表明,该方法在MIR-1K数据集上的GNSDR (Global Normalized Source to Distortion Ratio)提高了约5.2 dB。此外,我们检验了不同k值的分离结果。
Separation of singing voice from music accompaniment using matrix factorization method
Songs play an important role in entertainment. An audio signal separation system should be able to identify different audio signals such as speech, music and background noise. In a song the singing voice provides useful information. An automatic singing voice separation system is used for attenuating or removing the music accompaniment. The singing voice becomes a main attractive focus of attention. Singing is used to produces relevant sound with music by the human voice. The paper present the developed algorithm Robust Principal Component Analysis (RPCA) for separating singing voice from music background. This method is a matrix factorization for solving low-rank and sparse matrices. Singing Voice has been effectively separated from the mixture of music accompaniment. Evaluation results of the algorithm shows that this method can achieve around 5.2 dB higher GNSDR (Global Normalized Source to Distortion Ratio) on the MIR-1K dataset. Moreover, we examine the separation results for different values of k.