CVLGSDASSPNov 2, 2022

Audio-visual speech enhancement with a deep Kalman filter generative model

arXiv:2211.00988v111 citationsh-index: 12
Originality Incremental advance
AI Analysis

This work addresses speech enhancement for noisy audio recordings by incorporating visual data, though it appears incremental as it builds on existing VAE-based methods.

The authors tackled the problem of audiovisual speech enhancement by proposing a deep Kalman filter generative model that accounts for the sequential nature of speech data, resulting in superior performance over non-sequential VAE-based models and audio-only versions.

Deep latent variable generative models based on variational autoencoder (VAE) have shown promising performance for audiovisual speech enhancement (AVSE). The underlying idea is to learn a VAEbased audiovisual prior distribution for clean speech data, and then combine it with a statistical noise model to recover a speech signal from a noisy audio recording and video (lip images) of the target speaker. Existing generative models developed for AVSE do not take into account the sequential nature of speech data, which prevents them from fully incorporating the power of visual data. In this paper, we present an audiovisual deep Kalman filter (AV-DKF) generative model which assumes a first-order Markov chain model for the latent variables and effectively fuses audiovisual data. Moreover, we develop an efficient inference methodology to estimate speech signals at test time. We conduct a set of experiments to compare different variants of generative models for speech enhancement. The results demonstrate the superiority of the AV-DKF model compared with both its audio-only version and the non-sequential audio-only and audiovisual VAE-based models.

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