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首页> 外文期刊>IEEE transactions on audio, speech and language processing >Complex-Valued Independent Component Analysis for Online Blind Speech Extraction
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Complex-Valued Independent Component Analysis for Online Blind Speech Extraction

机译:在线盲语音提取的复值独立分量分析

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This paper presents a theoretical analysis of a certain criterion for complex-valued independent component analysis (ICA) with a focus on blind speech extraction (BSE) of a spatio-temporally nonstationary speech source. In the paper, the proposed criteria denoted KSICA is related to the well-known FastICA method with the Kurtosis contrast function. The proposed method is shown to share the important fixed-point feature with the FastICA method, although an improvement with the proposed method is that it does not exhibit the divergent behavior for a of Gaussian-only sources that the FastICA method tends to do, and it shows better performance in online implementations. Compared to the FastICA, the KSICA method provides a 10 dB higher source extraction performance and a 10 dB lower standard deviation in a data batch approach when the data batch size is less than 100 samples. For larger batch sizes, the KSICA metod performs equally well. In an online application with spatially stationary sources the KSICA method provides around 10 dB higher interference suppression, and 1 MOS-unit lower speech distortion compared to the FastICA for 0.15 s time constant in the algorithm update parameter. Thus, the FastICA performance matches the KSICA performance for a time constant above 1 s. Finally, in an online application with a moving speech source, the KSICA method provides 10 dB higher interference suppression, compared to the FastICA for the same algorithm settings. All in all, the proposed KSICA method is shown to be a viable alternative for online BSE of complex-valued signal mixtures.
机译:本文介绍了复数值独立分量分析(ICA)的某些准则的理论分析,重点是时空非平稳语音源的盲语音提取(BSE)。在本文中,以KSICA表示的拟议标准与具有峰度对比函数的众所周知的FastICA方法有关。尽管所提出的方法的一个改进是,它对FastICA方法趋向于做的仅是高斯的源没有表现出发散的行为,但是所提出的方法与FastICA方法具有相同的重要定点特征,并且它在在线实施中显示出更好的性能。与FastICA相比,当数据批量大小小于100个样本时,KSICA方法在数据批量方法中可提供10 dB的较高源提取性能和10 dB的标准偏差。对于较大的批量,KSICA方法的性能同样出色。在算法更新参数中,相对于FastICA,在0.15 s的时间常数内,在具有空间固定源的在线应用中,KSICA方法提供了比FastICA高大约10 dB的干扰抑制和1 MOS单位的较低语音失真。因此,FastICA性能与KSICA性能匹配的时间常数大于1 s。最后,在具有移动语音源的在线应用程序中,与相同算法设置下的FastICA相比,KSICA方法提供了高10 dB的干扰抑制。总而言之,所提出的KSICA方法被证明是复数值信号混合物在线BSE的可行替代方案。

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