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MAP-Based Underdetermined Blind Source Separation of Convolutive Mixtures by Hierarchical Clustering and -Norm Minimization

机译:分层聚类和-Norm最小化的基于MAP的卷积混合物不确定盲源分离

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We address the problem of underdetermined BSS. While most previous approaches are designed for instantaneous mixtures, we propose a time-frequency-domain algorithm for convolutive mixtures. We adopt a two-step method based on a general maximum a posteriori (MAP) approach. In the first step, we estimate the mixing matrix based on hierarchical clustering, assuming that the source signals are sufficiently sparse. The algorithm works directly on the complex-valued data in the time-frequency domain and shows better convergence than algorithms based on self-organizing maps. The assumption of Laplacian priors for the source signals in the second step leads to an algorithm for estimating the source signals. It involves the -norm minimization of complex numbers because of the use of the time-frequency-domain approach. We compare a combinatorial approach initially designed for real numbers with a second-order cone programming (SOCP) approach designed for complex numbers. We found that although the former approach is not theoretically justified for complex numbers, its results are comparable to, or even better than, the SOCP solution. The advantage is a lower computational cost for problems with low input/output dimensions.
机译:我们解决了未确定的BSS问题。虽然大多数以前的方法都是为瞬时混合物设计的,但我们提出了一种用于卷积混合物的时频域算法。我们采用基于一般最大后验(MAP)方法的两步方法。第一步,假设源信号足够稀疏,我们将基于分层聚类估计混合矩阵。该算法直接在时频域中处理复杂值数据,并且比基于自组织映射的算法具有更好的收敛性。在第二步骤中对源信号进行拉普拉斯先验的假设导致了一种用于估计源信号的算法。由于使用了时频域方法,因此涉及到-norm最小化复数。我们将最初为实数设计的组合方法与为复数设计的二阶锥规划(SOCP)方法进行了比较。我们发现,尽管从理论上讲,前一种方法不能用于复数,但其结果可与SOCP解决方案相比甚至更好。优点是输入/输出尺寸较小的问题的计算成本较低。

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