利用奇异谱分析的深度神经网络语音增强方法

Deep Neural Network speech Enhancement method based on singular Spectrum Analysis

  • 摘要: 针对现有深度神经网络语音增强方法对带噪语音的去噪能力有限、语音质量提升不高的问题,提出了一种基于奇异谱分析的深度神经网络语音增强方法。通过引入奇异谱分析算法对带噪语音进行预处理,以初步分离得到语音信号与噪声。接着将语音信号与噪声用于深度神经网络模型得训练,以得到性能更优的网络模型,从而使得本文方法具有更好的性能。最后在重建干净语音的环节中,同时使用神经网络估计得到的对数功率谱和带噪语音的对数功率谱,并加入了权重系数,使得本文提出的方法可以适应不同信噪比的情形,有效的去除背景噪声,降低语音信号的失真。本文通过仿真实验验证了该方法的有效性和鲁棒性。

     

    Abstract: In order to solve the problems of limited denoising ability and low speech quality improvement of existing deep neural network speech enhancement methods for noisy speech, a deep neural network speech enhancement method based on singular spectrum analysis is proposed. By introducing the singular spectrum analysis algorithm to preprocess the noisy speech, the speech signal and noise are preliminarily separated. Then the speech signal and noise are used to train the depth neural network model to obtain a network model with better performance, so that the new method of deep neural network speech enhancement based on singular spectrum analysis has better performance. Finally, both the logarithmic power spectrum estimated by the neural network and the logarithmic power spectrum of noisy speech are used to reconstruct clean speech. The method proposed in this paper can adapt to the situation of different signal-to-noise ratio, effectively remove the background noise and reduce the distortion of speech signal. In this paper, simulation experiments are carried out to verify the effectiveness and robustness of the method.

     

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