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Scalable non-square blind source separation in the presence of noise

机译:噪声存在下可扩展的非方形盲源分离

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Summary form only given. Few source separation and independent component analysis approaches attempt to deal with noisy data. We consider an additive noise mixing model with an arbitrary number of sensors and possibly more sources than sensors (the degenerate separation problem) when sources are disjointly orthogonal. We show how disjoint orthogonality can be viewed as a limit of a stochastic voice modeling assumption. This is the basis for our approach to noisy model estimation by maximum likelihood, under direct-path far-field assumptions. The implementation of the derived criterion involves iterating two steps - a partitioning of the time-frequency plane for separation followed by an optimization of the mixing parameter estimates. The solution is applicable to an arbitrary number of microphones and sources. Experimentally, we show the capability of the technique to separate four voices from two, four, six and eight channel recordings in the presence of strong noise.
机译:仅给出摘要表格。 很少的源分离和独立的组件分析方法尝试处理嘈杂的数据。 我们考虑一种具有任意数量的传感器的附加噪声混合模型,并且当源脱节正交时,可能比传感器(退化分离问题)更多的来源。 我们展示了如何将差异正交性视为随机语音建模假设的限制。 这是我们在直接路径的远场假设下最大可能性噪声模型估计方法的基础。 派生标准的实现涉及迭代两个步骤 - 用于分离的时频面的分区,然后优化混合参数估计。 该解决方案适用于任意数量的麦克风和来源。 在实验上,我们展示了技术在存在强烈噪声的情况下将四个声音分开四个声音的技术。

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