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Adaptive thresholding approach for robust voiced/unvoiced classification

机译:鲁棒浊音/清音分类的自适应阈值方法

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This paper presents a robust voiced/unvoiced classification method by using linear model of empirical mode decomposition (EMD) controlled by Hurst exponent. EMD decomposes any signals into a finite number of band limited signals called intrinsic mode functions (IMFs). It is assumed that voiced speech signal is composed of trend due to vocal cord vibration and some noise. No trend is present in unvoiced speech signal. A linear model is developed using IMFs of the noise part of the speech signal. Then a specified confidence interval of the linear model is set as the data adaptive energy threshold. If there exists at least one IMF exceeding the threshold and its fundamental period is within the pitch range, the speech is classified as voiced and unvoiced otherwise. The experimental results show that the proposed method performs superior compared to the recently developed voiced/unvoiced classification algorithms with noticeable performance.
机译:本文采用由赫斯特(Hurst)指数控制的经验模态分解(EMD)线性模型,提出了一种鲁棒的有声/无声分类方法。 EMD将任何信号分解为有限数量的称为固有模式函数(IMF)的频带受限信号。假定语音信号由声带振动和一些噪声引起的趋势组成。清语音信号中没有趋势。使用语音信号噪声部分的IMF建立线性模型。然后,将线性模型的指定置信区间设置为数据自适应能量阈值。如果存在至少一个超出阈值的IMF,并且其基本周期在音调范围内,则将语音分类为有声且无声。实验结果表明,与最近开发的有声/无声分类算法相比,该方法具有优越的性能。

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