多引用盲语音分离的快速约束独立分量分析

N. Thang, Sungyoung Lee, Young-Koo Lee
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引用次数: 5

摘要

在以往的工作中,提出了约束独立分量分析(cICA)算法从一些源信号的混合物中提取感兴趣的信号。然而,cICA所提出的同时提取所有信号的方法延长了该算法提取输出信号的处理时间。本文引入了一种新的cICA算法,从计算时间方面改进了cICA算法。本文提出的cICA算法通过对输入信号进行白化、对权向量进行归一化,并对输出信号进行逐一提取,与传统的cICA算法相比,减少了恢复原始信号的计算时间。同时,我们提出的cICA算法仍然保持了与传统cICA算法相同的恢复性能。此外,本文还介绍了我们提出的cICA和传统cICA在语音分离问题上的潜在应用,利用先验信息从混合信号中提取感兴趣的语音信号。
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Fast constrained independent component analysis for blind speech separation with multiple references
In previous work, the constrained independent component analysis (cICA) algorithm has been proposed to extract the interested signals from the mixtures of some source signals. However, the simultaneous extraction of all signals at the same time presented by cICA prolongs the processing time of this algorithm to extract output signals. In this paper, we introduce a new version of the cICA algorithm to improve cICA in the computational time aspect. By whitening input signals, normalizing weight vectors, and using the one-by-one extraction of output signals, our proposed cICA algorithm has reduced the computational time to recover original signals when compared with the conventional cICA. Meanwhile our proposed cICA algorithm still retains the same recovering performance with that of the conventional cICA. Moreover, in this paper, we also introduce a potential application of our proposed cICA and the conventional cICA on the speech separation problem using priori information to extract the interested speech signals from mixed signals.
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