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首页> 外文期刊>IEEE transactions on audio, speech and language processing >A Soft Voice Activity Detection Using GARCH Filter and Variance Gamma Distribution
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A Soft Voice Activity Detection Using GARCH Filter and Variance Gamma Distribution

机译:使用GARCH滤波器和方差Gamma分布的软语音活动检测

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摘要

This paper presents a robust algorithm for a voice activity detector (VAD) based on generalized autoregressive conditional heteroscedasticity (GARCH) filter, variance gamma distribution (VGD), and adaptive threshold function. GARCH models are new statistical methods that are used especially in economic time series. There is a consensus that speech signals exhibit variances that change through time. GARCH models are a popular choice to model these changing variances. A speech signal is assumed to have a VGD because the VGD has heavier tails than the Gaussian distribution (GD). The distribution of noise signal is assumed to be Gaussian. In proposed method, heteroscedasticity will be modeled by GARCH, and then the parameters of the distributions will be estimated recursively. Finally, hard detection is the result of comparing a multiple observation likelihood ratio test (MOLRT) with an adaptive threshold function. The simulation results show that the proposed VAD is able to operate down to -5 dB and in nonstationary environments
机译:本文提出了一种基于广义自回归条件异方差(GARCH)滤波器,方差伽马分布(VGD)和自适应阈值函数的语音活动检测器(VAD)的鲁棒算法。 GARCH模型是新的统计方法,尤其是在经济时间序列中使用。人们普遍认为语音信号会出现随时间变化的变化。 GARCH模型是对这些变化的方差建模的流行选择。假定语音信号具有VGD,因为VGD的尾部比高斯分布(GD)重。噪声信号的分布假定为高斯分布。在提出的方法中,将通过GARCH对异方差进行建模,然后对分布的参数进行递归估计。最后,硬检测是将多次观察似然比测试(MOLRT)与自适应阈值函数进行比较的结果。仿真结果表明,所提出的VAD能够在非平稳环境下低至-5 dB运行

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