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A null space method for over-complete blind source separation

机译:一种零空间方法,用于盲源分离的过度完成

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In blind source separation, there are M sources that produce sounds independently and continuously over time. These sounds are then recorded by m receivers. The sound recorded by each receiver at each time point is a linear superposition of the sounds produced by the M sources at the same time point. The problem of blind source separation is to recover the sounds of the sources from the sounds recorded by the receivers, without knowledge of the m×M mixing matrix that transforms the sounds of the sources to the sounds of the receivers at each time point. Over-complete separation refers to the situation where the number of sources M is greater than the number of receivers m, so that the source sounds cannot be uniquely solved from the receiver sounds even if the mixing matrix is known. In this paper, we propose a null space representation for the over-complete blind source separation problem. This representation explicitly identifies the solution space of the source sounds in terms of the null space of the mixing matrix using singular value decomposition. Under this representation, the problem can be posed in the framework of Bayesian latent variable model, where the mixing matrix and the source sounds can be inferred based on their posterior distributions. We then propose a null space algorithm for Markov chain Monte Carlo posterior sampling. We illustrate the algorithm using several examples under two different statistical assumptions about the independent source sounds. The blind source separation problem is mathematically equivalent to the independent component analysis problem. So our method can be equally applied to over-complete independent component analysis for unsupervised learning of high-dimensional data.
机译:在盲源分离中,有M个源会随着时间的推移独立不断地发出声音。这些声音然后由m个​​接收器录制。每个接收器在每个时间点记录的声音是M个声源在同一时间点产生的声音的线性叠加。盲源分离的问题是在不知道m×M混合矩阵的情况下从接收器记录的声音中恢复源的声音,该混合矩阵将源的声音转换为每个时间点的接收器的声音。过度完全分离是指源的数量M大于接收器的数量m的情况,因此即使已知混合矩阵,也无法从接收器的声音中唯一地解决源声音。在本文中,我们提出了针对完全盲源分离问题的零空间表示。该表示使用奇异值分解根据混合矩阵的零空间来明确标识源声音的解空间。在这种表示形式下,问题可能会出现在贝叶斯潜变量模型的框架中,其中混合矩阵和源声音可以根据它们的后验分布来推断。然后,我们提出了用于马尔可夫链蒙特卡洛后验采样的零空间算法。我们在关于独立源声音的两个不同统计假设下,使用几个示例来说明该算法。盲源分离问题在数学上等同于独立成分分析问题。因此,我们的方法可以同等地应用于针对高维数据的无监督学习的过度完全独立成分分析。

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