视听语音分离的深度变分生成模型

V. Nguyen, M. Sadeghi, E. Ricci, Xavier Alameda-Pineda
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引用次数: 9

摘要

在本文中,我们对给定单通道音频记录以及与每个说话者相关的视觉信息(嘴唇运动)的视听语音分离感兴趣。我们提出了一种基于视听生成建模的无监督技术。更具体地说,在训练过程中,使用变分自编码器(VAE)从干净的语音频谱中学习潜在变量生成模型。为了更好地利用视觉信息,从混合语音(而不是干净语音)和视觉数据中推断潜在变量的后验。视觉形态也通过视觉网络作为潜在变量的先验。在测试时,学习生成模型(演讲者独立和演讲者依赖场景)与背景噪声的无监督非负矩阵分解(NMF)方差模型相结合。然后用蒙特卡罗期望最大化算法估计所有潜在变量和噪声参数。我们的实验表明,所提出的基于无监督vae的方法比基于nmf的方法以及基于监督深度学习的技术产生更好的分离性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Variational Generative Models for Audio-Visual Speech Separation
In this paper, we are interested in audio-visual speech separation given a single-channel audio recording as well as visual information (lips movements) associated with each speaker. We propose an unsupervised technique based on audio-visual generative modeling of clean speech. More specifically, during training, a latent variable generative model is learned from clean speech spectra using a variational auto-encoder (VAE). To better utilize the visual information, the posteriors of the latent variables are inferred from mixed speech (instead of clean speech) as well as the visual data. The visual modality also serves as a prior for latent variables, through a visual network. At test time, the learned generative model (both for speaker-independent and speaker-dependent scenarios) is combined with an unsupervised non-negative matrix factorization (NMF) variance model for background noise. All the latent variables and noise parameters are then estimated by a Monte Carlo expectation-maximization algorithm. Our experiments show that the proposed unsupervised VAE-based method yields better separation performance than NMF-based approaches as well as a supervised deep learning-based technique.
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