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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE Transactions on >A Forced Spectral Diversity Algorithm for Speech Dereverberation in the Presence of Near-Common Zeros
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A Forced Spectral Diversity Algorithm for Speech Dereverberation in the Presence of Near-Common Zeros

机译:存在近似共零的语音去混响的强制频谱分集算法

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Blind identification of single-input multiple-output (SIMO) systems is not normally possible if common zeros exist in the channels. Studies of measured acoustic SIMO systems show that near-common zeros occur in such systems as encountered in the speech dereverberation task. We therefore introduce a method to add additional diversity to the SIMO system to be identified which we term forced spectral diversity (FSD) and we show that its use leads to an identification-equalization approach that gives improved dereverberation. As part of this work, we show the link between channel diversity and the effect of common zeros. We also define and discuss in more detail the concept and impact of near-common zeros. The proposed algorithm is presented specifically for a two-channel system where such near-common zeros exist.
机译:如果通道中存在公用零,通常不可能盲目识别单输入多输出(SIMO)系统。对测得的声学SIMO系统的研究表明,在语音去混响任务中遇到的这种系统中,几乎会出现零。因此,我们介绍了一种为要识别的SIMO系统增加额外分集的方法,我们称其为强制频谱分集(FSD),并且我们证明了该方法的使用导致了一种识别均衡方法,从而改善了混响效果。作为这项工作的一部分,我们展示了通道分集与公共零的影响之间的联系。我们还将更详细地定义和讨论接近通用零的概念和影响。提出的算法专门针对存在这样的近乎零的两通道系统而提出。

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