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Enhanced Online IVA with Switched Source Prior for Speech Separation

机译:增强的在线IVA,具有语音切换优先的切换源

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Independent vector analysis (IVA) is a blind source separation (BSS) technique that has demonstrated efficiency in separating speech signals from their convolutive mixtures in the frequency domain. Particularly, it avoids the problematic permutation problem by using a multivariate source prior to model statistical inter dependency across the frequency bins of each source signal. The selection of the source prior is vital to the performance of the method. Practical real time systems require an online mode which is performed iteratively as signal data arrive. The performance of the online IVA is measured by the convergence time and steady state separation and accuracy. This paper proposes a novel switched source prior technique to improve the performance of the online IVA algorithm. The techniques switches between two source priors to acquire the better performance properties of both distributions at different stages of the learning algorithm. The switching process is controlled by an adaptive learning scheme as a function of proximity to the target solution. The experimental results demonstrate an enhanced separation performance using real room impulse responses and recorded speech signals.
机译:独立矢量分析(IVA)是一种盲源分离(BSS)技术,已证明在频域中将语音信号从其卷积混合物中分离出来是有效的。特别地,它通过在跨每个源信号的频率仓的模型统计相互依赖性之前对模型进行统计,从而避免了有问题的置换问题。先验源的选择对于该方法的性能至关重要。实际的实时系统需要在线模式,该模式在信号数据到达时迭代执行。在线IVA的性能通过收敛时间,稳态分离和准确性来衡量。本文提出了一种新颖的切换源先验技术,以提高在线IVA算法的性能。该技术在两个源先验之间切换,以在学习算法的不同阶段获取两种分布的更好性能。切换过程由自适应学习方案根据与目标解决方案的接近程度来控制。实验结果表明,使用真实房间的脉冲响应和记录的语音信号可以提高分离性能。

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