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MAIN INSTRUMENT SEPARATION FROM STEREOPHONIC AUDIO SIGNALS USING A SOURCE/FILTER MODEL

机译:使用源/滤波器模型从立体声音频信号分离主仪器

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We propose a new approach to solo/accompaniment separation from stereophonic music recordings which extends a monophonic algorithm we recently proposed. The solo part is modelled using a source/filter model to which we added two contributions: an explicit smoothing strategy for the filter frequency responses and an unvoicing model to catch the stochastic parts of the solo voice. The accompaniment is modelled as a general instantaneous mixture of several components leading to a Nonnegative Matrix Factorization framework. The stereophonic signal is assumed to be the instantaneous mixture of the solo and accompaniment contributions. Both channels are then jointly used within a Maximum Likelihood framework to estimate all the parameters. Three rounds of parameter estimations are necessary to sequentially estimate the melody, the voiced part and at last the unvoiced part of the solo. Our tests show that there is a clear improvement from a monophonic reference system to the proposed stereophonic system, especially when including the unvoicing model. The smoothness of the filters does not provide the desired improvement in solo/accompaniment separation, but may be useful in future applications such as lyrics recognition. At last, our submissions to the Signal Separation Evaluation Campaign (SiSEC), for the "Professionally Produced Music Recordings" task, obtained very good results.
机译:我们提出了一种从立体声音乐录制的独奏/伴奏分离的新方法,该播放延伸了我们最近提出的单声道算法。独奏部分是使用源/滤波器模型进行建模的,我们添加了两种贡献:滤波器频率响应的明确平滑策略和未经操作模型,以捕获独奏声音的随机部分。伴随着模拟了导致非负矩阵分解框架的几个部件的一般瞬时混合物。假设立体声信号是Solo和伴奏贡献的瞬时混合物。然后在最大似然框架内共同使用两个通道来估计所有参数。三轮参数估计是顺序估计旋律,浊音部分和最后一部分的旋律。我们的测试表明,在包括未观看模型的情况下,单声道参考系统有明显改善。过滤器的平滑度不提供所需的伴随/伴奏分离的所需改善,但在未来的应用等诸如歌词识别之类的应用中可能是有用的。最后,我们向信号分离评估活动(SISEC)的提交,为“专业生产的音乐录音”任务,获得了非常好的结果。

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