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A Non-Linear Operator based Method for Harmonic Feature Extraction from Speech Signals

机译:基于非线性操作员的语音信号谐波特征提取方法

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An important pre-processing stage in speech recognition systems is that of extracting phonetically pertinent acoustic features from the speech signal. These features form the basis for discriminative classification and serve as cues for the identification of phonetic events in speech. The paper addresses this by presenting a novel method for the classification of harmonic (short-term periodic) and non-harmonic segments in speech signals. Classification is accomplished by proposing two new features derived from the non-linear Teager energy operator (TEO). The features proposed are the TEO-Weighted Harmonic Product (TEO-WHP*) and the TEO-Weighted Harmonic Sum (TEO-WHS*). Experiments are reported and discussed that demonstrate the effectiveness and the importance of these features as a valuable pre-processor for many speech systems.
机译:语音识别系统中的重要预处理阶段是从语音信号提取语音相关的声学特征的阶段。这些特征构成了歧视分类的基础,并作为言论识别语音事件的提示。本文通过呈现一种用于语音信号中的谐波(短期周期性)和非谐波段的分类的新方法来解决这一点。通过提出从非线性茶叶能量操作员(TEO)衍生的两个新功能来实现分类。所提出的特征是TEO加权谐波产品(TEO-WHP *)和TEO加权谐波总和(TEO-WHS *)。报告并讨论了实验,证明了这些特征的有效性和重要性,作为许多语音系统的有价值的预处理器。

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