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Single Channel Source Separation Using Filterbank and 2D Sparse Matrix Factorization

机译:使用滤波器组和二维稀疏矩阵分解的单通道源分离

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We present a novel approach to solve the problem of single channel source separation (SCSS) based on filterbank technique and sparse non-negative matrix two dimensional deconvolution (SNMF2D). The proposed approach does not require training information of the sources and therefore, it is highly suited for practicality of SCSS. The major problem of most existing SCSS algorithms lies in their inability to resolve the mixing ambiguity in the single channel observation. Our proposed approach tackles this difficult problem by using filterbank which decomposes the mixed signal into sub-band domain. This will result the mixture in sub-band domain to be more separable. By incorporating SNMF2D algorithm, the spectral-temporal structure of the sources can be obtained more accurately. Real time test has been conducted and it is shown that the proposed method gives high quality source separation performance.
机译:我们提出了一种新的方法来解决基于滤波器组技术和稀疏非负矩阵二维反卷积(SNMF2D)的单通道源分离(SCSS)问题。所提出的方法不需要训练源的信息,因此,它非常适合SCSS的实用性。大多数现有的SCSS算法的主要问题在于它们无法解决单通道观测中的混合歧义。我们提出的方法通过使用滤波器组解决了这一难题,该滤波器组将混合信号分解为子带域。这将导致子带域中的混合更加可分离。通过合并SNMF2D算法,可以更准确地获得源的频谱-时间结构。进行了实时测试,结果表明所提方法具有较高的信源分离性能。

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