基于Hilbert-Huang变换的语音检测

Wu Wang, Xueyao Li, Rubo Zhang
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引用次数: 13

摘要

在强噪声环境下,语音检测的性能往往较差,为了对算法进行改进,采用了Hilbert-Huang变换。将语音信号分解为有限个本征模态函数,然后通过希尔伯特变换得到原始信号的能量-频率-时间分布。将EMD作为滤波器去除不需要的噪声,然后提取特征,通过研究能量随时间的分布来检测语音帧。实验表明,HHT有助于提取信号的特征参数,提高语音检测的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech Detection Based on Hilbert-Huang Transform
Under strong noise environments, the speech detection often performs bad, in order to make some improvements the Hilbert-Huang transform is used in the algorithm. The speech signal is decomposed into finite intrinsic mode functions, and then, with the Hilbert transform, the energy-frequency-time distribution of the original signal can be obtained. The EMD is used as a filter to remove unwanted noise, and then the feature was extracted to detect speech frames by investigating the distribution of energy depending on the time. Experiments show HHT is helpful to extract the characteristic parameters of the signals, and also is capable to improve the performance of speech detection
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