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MAP-based permutation alignment for underdetermined convolutive blind source separation

机译:基于地图的排列对齐,用于未确定的卷曲盲源分离

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This paper considers the alignment of permutation for underdetermined blind source separation of convolutively mixed sparse signals in the frequency domain. To resolve the permutation ambiguities between the sources of neighbor frequency bins, a probabilistic approach based on maximizing a posteriori (MAP) is proposed. The prior distribution of the sources is assumed to follow a dependent multivariate super-Gaussian which considers statistical dependence between neighbor frequency bins. It is difficult to obtain the posterior probabilities of all possible permutations which contain a mathematically intractable integration, thus the integrand is approximated as an integrable form, a summation of Dirac delta functions. Given approximated posterior probabilities, the permutation which has the highest posterior probability is selected. It is experimentally shown that the proposed algorithm is better than conventional algorithms in some specific cases in terms of alignment accuracy.
机译:本文考虑了频域中具有圆波抵消混合稀疏信号的未确定盲源分离的排列对齐。为了解决邻居频率箱的来源之间的置换歧义,提出了一种基于最大化后验(MAP)的概率方法。假设源的先前分布遵循依赖于多变量的超高斯,其考虑邻居频率箱之间的统计依赖性。难以获得包含数学难以解决的集成的所有可能排列的后验概率,因此整合和近似为可积分形式,是DIRAC Delta功能的总和。给定近似的后验概率,选择具有最高概率概率的置换。实验结果表明,在对准精度方面,所提出的算法比传统算法优于传统算法。

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