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Informed separation of spatial images of stereo music recordings using second-order statistics

机译:使用二阶统计信息进行立体声音乐录音的空间图像知情分离

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In this work we address a reverse audio engineering problem, i.e. the separation of stereo tracks of professionally produced music recordings. More precisely, we apply a spatial filtering approach with a quadratic constraint using an explicit source-image-mixture model. The model parameters are “learned” from a given set of original stereo tracks, reduced in size and used afterwards to demix the desired tracks in best possible quality from a preexisting mixture. Our approach implicates a side-information rate of 10 kbps per source or channel and has a low computational complexity. The results obtained for the SiSEC 2013 dataset are intended to be used as reference for comparison with unpublished approaches.
机译:在这项工作中,我们解决了反向音频工程问题,即专业制作的音乐录音的立体声轨道的分离。更确切地说,我们使用显式的源图像混合模型应用具有二次约束的空间滤波方法。从一组给定的原始立体声轨道中“学习”模型参数,将其减小尺寸,然后用于从现有混合物中以最佳质量对所需轨道进行混合。我们的方法意味着每个源或通道的边信息速率为10 kbps,并且计算复杂度较低。从SiSEC 2013数据集获得的结果旨在用作与未公开方法进行比较的参考。

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