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Robust Harmonic Features for Classification-Based Pitch Estimation

机译:基于分类的基音估计的稳健谐波特性

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摘要

Pitch estimation in diverse naturalistic audio streams remains a challenge for speech processing and spoken language technology. In this study, we investigate the use of robust harmonic features for classification-based pitch estimation. The proposed pitch estimation algorithm is composed of two stages: pitch candidate generation and target pitch selection. Based on energy intensity and spectral envelope shape, five types of robust harmonic features are proposed to reflect pitch associated harmonic structure. A neural network is adopted for modeling the relationship between input harmonic features and output pitch salience for each specific pitch candidate. In the test stage, each pitch candidate is assessed with an output salience that indicates the potential as a true pitch value, based on its input feature vector processed through the neural network. Finally, according to the temporal continuity of pitch values, pitch contour tracking is performed using a hidden Markov model (HMM), and the Viterbi algorithm is used for HMM decoding. Experimental results show that the proposed algorithm outperforms several state-of-the-art pitch estimation methods in terms of accuracy in both high and low levels of additive noise.
机译:各种自然主义音频流中的音高估计对于语音处理和口语技术仍然是一个挑战。在这项研究中,我们调查了使用稳健的谐波特征进行基于分类的音高估计。提出的基音估计算法包括两个阶段:基音候选者生成和目标基音选择。基于能量强度和频谱包络形状,提出了五种鲁棒的谐波特征来反映音高相关的谐波结构。采用神经网络对每个特定音高候选者的输入谐波特征与输出音高显着性之间的关系进行建模。在测试阶段,基于通过神经网络处理的输入特征向量,以输出显着性评估每个音高候选者,该显着性将电位指示为真实音高值。最后,根据音调值的时间连续性,使用隐马尔可夫模型(HMM)进行音调轮廓跟踪,并将Viterbi算法用于HMM解码。实验结果表明,所提出的算法在高和低水平的附加噪声方面都优于几种最新的音高估计方法。

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