基于不完全解混变换的频域盲语音分离

Zbyněk Koldovský, F. Nesta, P. Tichavský, Nobutaka Ono
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引用次数: 4

摘要

我们提出了一种新的解决盲语音分离问题的方法,该方法只在选定的频带内估计解混变换。该解决方案是基于独立矢量分析应用于瞬时混合物的子集,每个选择的频率bin。接下来,提出了两种方法来完成变换:一种是基于零波束形成的,另一种是基于凸规划的。在随后的实验中,我们比较了两种方法的组合,并评估了它们检索整个去混变换的能力。根据所选频率的数量和房间脉冲响应的稀疏性,这些方法在计算复杂性和分离精度方面都有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency-domain blind speech separation using incomplete de-mixing transform
We propose a novel solution to the blind speech separation problem where the de-mixing transform is estimated only within selected frequency bins. This solution is based on Independent Vector Analysis applied to a subset of instantaneous mixtures, one per selected frequency bin. Next, two approaches are proposed to complete the transform: one based on null beamforming, and the other based on convex programming. In subsequent experiments, we compare combinations of both methods and evaluate their ability to retrieve the whole de-mixing transform. Depending on the number of selected frequencies and the sparsity of room impulse responses, the methods show improvements in terms of computational complexity as well as in terms of separation accuracy.
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