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Bayesian Unification of Sound Source Localization and Separation with Permutation Resolution

机译:贝叶斯统一声源定位和排列分辨率的分离

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Sound source localization and separation with permutation resolution are essential for achieving a computational auditory scene analysis system that can extract useful information from a mixture of various sounds. Because existing methods cope separately with these problems despite their mutual dependence, the overall result with these approaches can be degraded by any failure in one of these components. This paper presents a unified Bayesian framework to solve these problems simultaneously where localization and separation are regarded as a clustering problem. Experimental results confirm that our method outperforms state-of-the-art methods in terms of the separation quality with various setups including practical reverberant environments.
机译:声源定位和与排列分辨率的分离对于实现计算听觉场景分析系统至关重要,该计算听觉场景分析系统可以从各种声音的混合中提取有用的信息。由于现有方法分别应对这些问题,尽管它们相互依赖性,因此具有这些方法的总体结果可以通过这些组件之一的任何故障降低。本文介绍了一个统一的贝叶斯框架,可以同时解决这些问题,其中定位和分离被视为聚类问题。实验结果证实,我们的方法在具有包括实用混响环境的各种设置的分离质量方面优于最先进的方法。

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