Fuzzy clustering of independent components within time-domain blind audio source separation method

J. Málek, Zbyněk Koldovský
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Abstract

This paper deals with several modifications of an existing Blind Audio Source Separation (BASS) method called T-ABCD. The method applies Independent Component Analysis (ICA) in the time-domain, which gives independent components of individual signals that form unknown groups. The need is to recover these groups using a clustering algorithm and a similarity measure, and reconstruct the separated signals from the groups then. In this paper, several novel criteria that are suitable to measure the similarity between audio components are proposed. Next, fuzzy clustering algorithms are applied to group the components, and novel reconstruction approaches relying on proper weighting of components are proposed. The proposed modifications are compared by experiments, and conclusions are drawn.
时域内独立分量的模糊聚类盲音频源分离方法
本文对现有的盲音源分离(BASS)方法T-ABCD进行了改进。该方法在时域中应用独立分量分析(ICA),给出组成未知群的单个信号的独立分量。需要使用聚类算法和相似度度量来恢复这些组,然后从组中重建分离的信号。本文提出了几种适合度量音频分量相似度的新准则。其次,应用模糊聚类算法对构件进行分组,提出了基于构件适当权重的重构方法。通过实验对所提出的修正方法进行了比较,得出了结论。
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