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BLIND SPEECH SEPARATION USING HIGH ORDER STATISTICS

机译:使用高阶统计分离盲目

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This paper deals with blind speech separation of instantaneous and convolutive mixtures of non-Gaussian sources. The separation criterion is based on higher order statistics (HOS) on the assumption that the sources are statistically independent. We propose to simplify and to improve the classical Herault-Jutten algorithm by choosing adequate high order non-linear functions for adaptation. The convolutive case is investigated through a model with impulse responses modeling the Head Related Transfer Function (HRTF). Experimental results show the efficiency of the proposed approach in terms of signal-to-interference ratio, when compared to the widely used fastICA algorithm. In the convolutive case a satisfactory separation of the sources has been achieved.
机译:本文涉及瞬间和无高斯来源旋转混合物的盲言语分离。分离标准基于更高阶统计(HOS),假设源在统计上独立。我们建议通过选择适当的高阶非线性函数来简化和改进经典的Herault-Jutten算法。通过模型通过模型来研究卷曲案件,该模型建模头部相关传递函数(HRTF)。实验结果表明,与广泛使用的Fastica算法相比,在信号到干扰比率方面提出了方法的效率。在卷曲的情况下,已经实现了令人满意的来源分离。

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