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The statistical structures of male and female speech signals

机译:男女语音信号的统计结构

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The goal of this paper is to learn or adapt statistical features of gender specific speech signals. The adaptation is performed by finding basis functions that encode the speech signal such that the resulting coefficients are statistically independent and the information redundancy is minimized. We use a flexible independent component analysis (ICA) algorithm to adapt the basis functions as well as the source coefficients for male and female speakers respectively. The learned features show significant differences in frequency and time span. Our results suggest that the male speech features can be described by Gabor-like wavelet filters whereas the female speech signal has a much longer time span. We present a detailed time-frequency analysis strongly suggesting that those features can be used to qualify and quantify gender-specific speech signal differences.
机译:本文的目的是学习或适应特定性别的语音信号的统计特征。通过找到对语音信号进行编码的基本函数来执行适配,从而使得所得的系数在统计上是独立的,并且信息冗余被最小化。我们使用灵活的独立分量分析(ICA)算法来分别调整男性和女性说话者的基本功能以及源系数。所学习的功能显示出频率和时间跨度上的显着差异。我们的结果表明,男性语音特征可以通过类似Gabor的小波滤波器来描述,而女性语音信号具有更长的时间跨度。我们提出了详细的时频分析,强烈建议这些功能可用于限定和量化特定于性别的语音信号差异。

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