基于IVA的卷积混合语音盲源分离方法

T. Jan, H. Zafar, R. A. Khalil, M. Ashraf
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引用次数: 4

摘要

在这里,我们提出了一种新的算法,用于使用两个麦克风的录音来分离卷积语音观察。该方法结合了独立矢量分析(IVA)和理想二值掩码(IBM),并结合了倒谱域的后滤波处理。该算法包括3个步骤。在第一步中,采用IVA算法从双麦克风录音中分离源信号。第二步是通过比较使用IVA技术实现的分离源的相应时频(T-F)单元的能量来估计IBM。最后一步是通过采用倒谱平滑来减少音乐噪声,这种噪声是由于T-F掩蔽而产生的。通过模拟室内模型产生的混响混合,采用信噪比(SNR)测量来评估所提出方法的整体性能。评估表明,与最先进的方法相比,该方法效率更高,语音质量得到改善,同时产生类似的隔离性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A blind source separation approach based on IVA for convolutive speech mixtures
Here we present a new algorithm for the separation of convolutive speech observations using recordings from 2 microphones. This method is the union of independent vector analysis (IVA) and ideal binary mask (IBM), in conjunction with a post-filtering process in the cepstral domain. The proposed algorithm comprises of 3 steps. In the first step, an IVA algorithm is applied for the separation of the source signals from 2-microphone recordings. Second step is the estimation of IBM by the comparison of the energy of corresponding time-frequency (T-F) units of the segregated sources that are achieved using the IVA technique. Final step is the reduction of the musical noise by employing cepstral smoothing and such a noise is generated due to T-F masking. The signal to noise ratio (SNR) measurement has been used to evaluate the overall performance of the proposed method by employing the reverberant mixtures that are produced via simulated room model. The evaluation shows that it is more efficient and speech quality has been improved while generating similar segregation performance compared to a state-of-the-art approach.
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