基于cnn判别建模的语音噪声鲁棒基频估计

Tomonorio Kawamura, A. Kai, S. Nakagawa
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引用次数: 1

摘要

基频(F0)是表征周期信号基音的一个量,对时变准周期声信号的基频估计是语音处理研究中的常见问题之一。正确估计这一点有助于改进语音处理系统,如韵律分析、语音测试系统和语音识别系统。虽然已经提出了许多算法,并在清洁环境下表现出优异的性能,但对于噪声环境来说,这是一个非常困难的任务。众所周知,机器学习方法作为一种判别模型对于处理混合噪声的数据是有效的。本文利用深度神经网络(DNN)的一种——卷积神经网络(CNN),提出了一种鲁棒的含噪语音信号基频估计方法。在我们提出的方法中,卷积层和池化层作为自相关分析的近似器,然后进行判别建模,对量化的F0状态进行分类。该过程获得一个提取噪声鲁棒F0特征的鉴别器。实验结果表明,该方法优于基于自相关分析及其与深度神经网络建模相结合的卷积方法。
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Noise Robust Fundamental Frequency Estimation of Speech using CNN-based discriminative modeling
The fundamental frequency (F0) is a quantity representing the pitch of periodic signal and its estimation for time-variant quasiperiodic acoustic signal is one of common problems in speech processing studies. The correct estimation of this contributes to the improvement of speech processing systems such as, analysis of prosody, test-to-speech system and speech recognition system. While many algorithms have been proposed and they exhibit excellent performance for clean environment, it is a very difficult task for noisy environment. It is generally known that machine learning approach is effective as a discriminative model for handling data in which noise is mixed. In this paper, we propose a robust fundamental frequency estimation method for noisy speech signal by using convolutional neural network (CNN) which is a of deep neural network (DNN). In our proposed method, convolution layer and pooling layer serve as an approximator of autocorrelation analysis and followed by discriminative modeling for classifying quantized F0 state. This process acquires a discriminator that extracts noise robust F0 features. Experimental result showed that our method outperforms convolutional methods based on autocorrelation analysis and its combination with DNN modeling.
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