Speech Enhancement With Deep Neural Networks Using MoG Based Labels

Hodaya Hammer, Gilad Rath, Shlomo E. Chazan, J. Goldberger, S. Gannot
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Abstract

In this paper we present a mixture of Gaussians-deep neural network (MoG-DNN) algorithm for single-microphone speech enhancement. We combine between the generative mixture of Gaussians (MoG) model and the discriminative deep neural network (DNN). The proposed algorithm consists of two phases, the training phase and the test phase. In the training phase, the clean speech power spectral density (PSD) is modeled as a MoG representing an unsupervised assortment of the speech signal. Following, the database is labeled to fit the given MoG. DNN is then trained to classify noisy time-frame features to one of the Gaussians from the already inferred MoG. Given the classification results, a speech presence probability (SPP) is obtained in the test phase. Using the SPP, soft spectral subtraction is then applied, while, simultaneously updating the noise statistics. The generative unsupervised MoG can be applied to any unknown database, in addition to preserving the speech spectral structure. Furthermore, the discriminative DNN maintains the continuity of the speech. Experimental study shows that the proposed algorithm produces higher objective measurements scores compared to other speech enhancement algorithms.
基于MoG标签的深度神经网络语音增强
本文提出了一种混合高斯-深度神经网络(MoG-DNN)算法用于单麦克风语音增强。我们将生成混合高斯模型(MoG)与判别深度神经网络(DNN)相结合。该算法分为两个阶段:训练阶段和测试阶段。在训练阶段,将干净语音功率谱密度(PSD)建模为表示语音信号无监督分类的MoG。接下来,对数据库进行标记以符合给定的MoG。然后训练DNN将有噪声的时间框架特征从已经推断的MoG中分类为高斯函数之一。根据分类结果,在测试阶段得到语音存在概率(SPP)。使用SPP,然后应用软谱减法,同时更新噪声统计量。在保留语音频谱结构的基础上,生成无监督MoG可以应用于任何未知数据库。此外,判别DNN保持了语音的连续性。实验研究表明,与其他语音增强算法相比,该算法具有更高的客观测量分数。
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