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Blind Source Separation of Acoustic Signals Based on Multistage ICA Combining Frequency-Domain ICA and Time-Domain ICA

机译:基于频域ICA和时域ICA的多级ICA的声信号盲源分离

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摘要

We propose a new algorithm for blind source separation (BSS), in which frequency-domain independent component analysis (FDICA) and time-domain ICA (TDICA) are combined to achieve a superior source-separation performance under reverberant conditions. Generally speaking, conventional TDICA fails to separate source signals under heavily reverberant conditions because of the low convergence in the iterative learning of the inverse of the mixing system. On the other hand, the separation performance of conventional FDICA also degrades significantly because the independence assumption of narrow-band signals collapses when the number of subbands increases. In the proposed method, the separated signals of FDICA are regarded as the input signals for TDICA, and we can remove the residual crosstalk components of FDICA by using TDICA. The experimental results obtained under the reverberant condition reveal that the separation performance of the proposed method is superior to those of TDICA- and FDICA-based BSS methods.
机译:我们提出了一种新的盲源分离算法(BSS),该算法将频域独立分量分析(FDICA)和时域ICA(TDICA)结合起来,以在混响条件下实现出色的信源分离性能。一般而言,由于在混响系统逆过程的迭代学习中收敛性较低,因此传统的TDICA在严重混响条件下无法分离源信号。另一方面,传统的FDICA的分离性能也显着降低,这是因为当子带的数量增加时,窄带信号的独立性假设会崩溃。在该方法中,将分离出的FDICA信号作为TDICA的输入信号,可以使用TDICA去除FDICA的残留串扰分量。在混响条件下获得的实验结果表明,该方法的分离性能优于基于TDICA和FDICA的BSS方法。

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