基于Hilbert-Huang变换理论的语音增强

Xiaojie Zou, Xueyao Li, Rubo Zhang
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引用次数: 25

摘要

语音增强是解决语音噪声问题的有效方法。希尔伯特-黄变换(Hilbert-Huang transform, HHT)能有效地描述动态信号的局部特征,是一种新的、强有力的时频分析理论。本文根据HHT理论,提出了一种新的语音增强方法,以提高语音量和处理后数据的信噪比。通过经验模态合成(EMD)方法,将语音信号分解为若干个imf。然后根据每个IMF的特征去除背景噪声,重建信号。在语音信噪比较低的情况下,实验结果表明,该算法对大多数语音信号在测试噪声条件下是有效的,能够提高语音的信噪比。与基于谱减法和小波变换的语音增强方法相比,基于hht的语音增强方法在一定程度上更胜一筹
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech Enhancement Based on Hilbert-Huang Transform Theory
Speech enhancement is effective in solving the problem of noisy speech. Hilbert-Huang transform (HHT) is efficient for describing the local features of dynamic signals and is a new and powerful theory for the time-frequency analysis. According to the theory of HHT, this text introduced a new method of speech enhancement to improve the speech quantity and the signal noise ratio (SNR) of processed data. By the method of empirical mode composition (EMD), the speech signal is decomposed into several IMFs. Then remove the background noise from each IMF according to its own characters and rebuild the signal. While the SNR of the speech is low, the experiment results show that this algorithm is valid on tested noise conditions for most of speech signals and is capable to improve the SNR of the speech. Comparing with some other methods for speech enhancement such as methods based on spectrum subtraction as well as the wavelet transform, we can find that the HHT-based method is better to a certain extent
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