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Noise-Presence-Probability-Based Noise PSD Estimation by Using DNNs

机译:DNN的基于噪声存在概率的噪声PSD估计

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A noise power spectral density (PSD) estimation is an indispensable component of speech spectral enhancement systems. In this paper we present a noise PSD tracking algorithm, which employs a noise presence probability estimate delivered by a deep neural network (DNN). The algorithm provides a causal noise PSD estimate and can thus be used in speech enhancement systems for communication purposes. An extensive performance comparison has been carried out with ten causal state-of-the-art noise tracking algorithms taken from the literature and categorized acc. to applied techniques. The experiments showed that the proposed DNN-based noise PSD tracker outperforms all competing methods with respect to all tested performance measures, which include the noise tracking performance and the performance of a speech enhancement system employing the noise tracking component.
机译:噪声功率谱密度(PSD)估计是语音谱增强系统必不可少的组成部分。在本文中,我们提出了一种噪声PSD跟踪算法,该算法采用了由深度神经网络(DNN)传递的噪声存在概率估计。该算法提供了因果噪声PSD估计值,因此可以在语音增强系统中用于通信目的。已使用十种因果关系的先进噪声跟踪算法(从文献和分类acc中选取)进行了广泛的性能比较。应用技术。实验表明,相对于所有经过测试的性能指标,所提出的基于DNN的噪声PSD跟踪器优于所有竞争方法,其中包括噪声跟踪性能和采用噪声跟踪组件的语音增强系统的性能。

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