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首页> 外文期刊>International journal of speech technology >Pitch segmentation of speech signals based on short-time energy waveform
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Pitch segmentation of speech signals based on short-time energy waveform

机译:基于短时能量波形的语音信号音高分割

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摘要

In general, speech is constituted of quasi-repetitive patterns called pitches representing the speech fundamental period and tonal information of the voice. Extraction of pitch information that is crucial for many speech processing techniques, usually faces a noise problem and interference caused by high-order harmonic components. This paper introduces a novel, noise-robust method for determining speech fundamental frequency and pitch segmentation, based on a short-time energy waveform (SEW), defined as a moving average squared signal. When applying a moving average filter with a window size closed to the fundamental period, nearly repetitive patterns, with fewer ripples, synchronizing with actual pitches can clearly be observed in the SEW. The DC component in the SEW is removed using morphological top-hat and bottom-hat transforms. The fundamental frequency is determined as the frequency corresponding to the largest peak of the power spectrum of the DC-removed SEW. Finally, a time-domain window search is then performed to locate local extrema associated with pitches. Compared to traditional pitch detection techniques, the proposed technique yields pitch segmentation results with a higher rate of accuracy and greater noise robustness.
机译:通常,语音由称为语音的基音和语音的音调信息的准重复模式构成。音调信息的提取对于许多语音处理技术至关重要,通常会遇到噪声问题以及由高次谐波分量引起的干扰。本文介绍了一种基于短时能量波形(SEW)的,用于确定语音基本频率和音高分段的新颖,噪声稳健的方法,该波形被定义为移动平均平方信号。当使用窗口大小接近基本周期的移动平均滤波器时,可以在SEW中清楚地观察到几乎重复的图案,且波纹较少,与实际音高同步。 SEW中的DC分量使用形态学的礼帽式和礼帽式转换来去除。将基频确定为与去除直流的SEW的功率谱的最大峰值相对应的频率。最后,然后进行时域窗口搜索以定位与音高相关的局部极值。与传统的音高检测技术相比,所提出的技术产生音高分割结果,具有更高的准确率和更大的噪声鲁棒性。

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