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Deep Neural Network for Supervised Single-Channel Speech Enhancement

机译:用于监督单通道语音增强的深神经网络

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Speech enhancement is fundamental for various real time speech applications and it is a challenging task in the case of a single channel because practically only one data channel is available. We have proposed a supervised single channel speech enhancement algorithm in this paper based on a deep neural network (DNN) and less aggressive Wiener filtering as additional DNN layer. During the training stage the network learns and predicts the magnitude spectrums of the clean and noise signals from input noisy speech acoustic features. Relative spectral transform-perceptual linear prediction (RASTA-PLP) is used in the proposed method to extract the acoustic features at the frame level. Autoregressive moving average (ARMA) filter is applied to smooth the temporal curves of extracted features. The trained network predicts the coefficients to construct a ratio mask based on mean square error (MSE) objective cost function. The less aggressive Wiener filter is placed as an additional layer on the top of a DNN to produce an enhanced magnitude spectrum. Finally, the noisy speech phase is used to reconstruct the enhanced speech. The experimental results demonstrate that the proposed DNN framework with less aggressive Wiener filtering outperforms the competing speech enhancement methods in terms of the speech quality and intelligibility.
机译:语音增强是各种实时语音应用的基础,并且在单个通道的情况下是一个具有挑战性的任务,因为实际上只有一个数据信道可用。我们在本文中提出了一种基于深神经网络(DNN)和较少的侵略性维纳滤波作为附加DNN层的监督单通道语音增强算法。在培训阶段期间,网络了解并预测来自输入噪声语音声学特征的清洁和噪声信号的幅度谱。相对光谱变换 - 感知线性预测(RASTA-PLP)用于提出的方法以在帧级提取声学特征。自回归移动平均(ARMA)滤波器用于平滑提取特征的时间曲线。训练网络预测基于均方误差(MSE)目标成本函数构建比率掩模的系数。将较少的侵略性维纳滤波器放在DNN顶部的附加层,以产生增强的幅度谱。最后,嘈杂的语音阶段用于重建增强的语音。实验结果表明,在语音质量和可懂度方面,拟议的DNN框架具有较少的侵略性维纳滤波的竞争性语音增强方法。

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