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An improved speech endpoint detection based on adaptive sub-band selection spectral variance

机译:基于自适应子带选择频谱方差的改进语音端点检测

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Speech endpoint detection is an important component in different speech processing systems. The endpoint detection using basic spectral variance becomes difficult and inaccurate when speech signals are contaminated by high noise. An improved spectral variance method is presented in this paper. The noisy speech is firstly enhanced using spectral subtraction method. Then an adaptive sub-band selection spectral variance is used to detect the endpoints. It improves the discriminability between speech and noise so that it becomes easier to set thresholds. Finally, experiment results are given to show the effectiveness of the improved method outperforms basic spectral variance method. Furthermore, for low signal-to-noise ratio (SNR), the proposed method has better robustness for different types of noise.
机译:语音端点检测是不同语音处理系统中的重要组件。当语音信号被高噪声污染时,使用基本频谱方差的端点检测变得困难且不准确。本文提出了一种改进的谱方差法。首先使用频谱减法来增强嘈杂的语音。然后,使用自适应子带选择频谱方差来检测端点。它改善了语音和噪声之间的可分辨性,从而使设置阈值变得更加容易。最后,实验结果表明改进方法的有效性优于基本谱方差法。此外,对于低信噪比(SNR),该方法对于不同类型的噪声具有更好的鲁棒性。

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