ASLGSDJun 22, 2023

Wind Noise Reduction with a Diffusion-based Stochastic Regeneration Model

arXiv:2306.12867v25 citationsh-index: 34
Originality Incremental advance
AI Analysis

This addresses audio quality issues for users in windy environments, representing an incremental improvement in noise reduction techniques.

The paper tackles wind noise reduction in single-channel audio by introducing a diffusion-based stochastic regeneration model that accounts for non-linear deformations from wind, showing it outperforms other neural-network-based methods and generalizes well to unseen real-recorded noise.

In this paper we present a method for single-channel wind noise reduction using our previously proposed diffusion-based stochastic regeneration model combining predictive and generative modelling. We introduce a non-additive speech in noise model to account for the non-linear deformation of the membrane caused by the wind flow and possible clipping. We show that our stochastic regeneration model outperforms other neural-network-based wind noise reduction methods as well as purely predictive and generative models, on a dataset using simulated and real-recorded wind noise. We further show that the proposed method generalizes well by testing on an unseen dataset with real-recorded wind noise. Audio samples, data generation scripts and code for the proposed methods can be found online (https://uhh.de/inf-sp-storm-wind).

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