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首页> 外文期刊>EURASIP journal on advances in signal processing >Independent vector analysis based on overlapped cliques of variable width for frequency-domain blind signal separation
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Independent vector analysis based on overlapped cliques of variable width for frequency-domain blind signal separation

机译:基于可变宽度的重叠集团的独立矢量分析,用于频域盲信号分离

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A novel method is proposed to improve the performance of independent vector analysis (IVA) for blind signal separation of acoustic mixtures. IVA is a frequency-domain approach that successfully resolves the well-known permutation problem by applying a spherical dependency model to all pairs of frequency bins. The dependency model of IVA is equivalent to a single clique in an undirected graph; a clique in graph theory is defined as a subset of vertices in which any pair of vertices is connected by an undirected edge. Therefore, IVA imposes the same amount of statistical dependency on every pair of frequency bins, which may not match the characteristics of real-world signals. The proposed method allows variable amounts of statistical dependencies according to the correlation coefficients observed in real acoustic signals and, hence, enables more accurate modeling of statistical dependencies. A number of cliques constitutes the new dependency graph so that neighboring frequency bins are assigned to the same clique, while distant bins are assigned to different cliques. The permutation ambiguity is resolved by overlapped frequency bins between neighboring cliques. For speech signals, we observed especially strong correlations across neighboring frequency bins and a decrease in these correlations with an increase in the distance between bins. The clique sizes are either fixed, or determined by the reciprocal of the mel-frequency scale to impose a wider dependency on low-frequency components. Experimental results showed improved performances over conventional IVA. The signal-to-interference ratio improved from 15.5 to 18.8 dB on average for seven different source locations. When we varied the clique sizes according to the observed correlations, the stability of the proposed method increased with a large number of cliques.
机译:提出了一种新的方法来提高独立矢量分析(IVA)对声学混合物的盲信号分离的性能。 IVA是一种频域方法,通过将球面依赖模型应用于所有成对的频点对,成功解决了众所周知的置换问题。 IVA的依赖模型等效于无向图中的单个团;图论中的集团定义为顶点的子集,其中任意一对顶点通过无向边连接。因此,IVA对每对频点施加相同数量的统计依赖性,这可能与实际信号的特征不匹配。所提出的方法允许根据在真实声信号中观察到的相关系数来可变数量的统计依赖性,并且因此使得统计依赖性的建模更加精确。许多派系构成了新的依存关系图,因此将相邻的频率段分配给同一派系,而远距离的段则分配给不同的派系。排列歧义由相邻集团之间重叠的频率仓解决。对于语音信号,我们观察到相邻频率仓之间的相关性特别强,并且随着仓之间距离的增加,这些相关性降低。组大小是固定的,或者由梅尔频率标度的倒数确定,以对低频分量施加更大的依赖性。实验结果表明,与传统的IVA相比,性能得到了改善。七个不同信号源位置的信号干扰比平均从15.5 dB提高到18.8 dB。当我们根据观察到的相关性改变团的大小时,所提出的方法的稳定性随着团的数量的增加而增加。

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