Diffusion Models for Audio Restoration
Jean-Marie Lemercier, Julius Richter, Simon Welker, Eloi Moliner, Vesa, V\"alim\"aki, Timo Gerkmann

TL;DR
This paper explores the use of diffusion models for audio restoration, specifically speech enhancement and music restoration, demonstrating their potential for high-quality, interpretable audio recovery in challenging acoustic conditions.
Contribution
It introduces diffusion models as a promising approach for audio restoration, combining interpretability with high performance, and discusses their application to speech and music enhancement tasks.
Findings
Diffusion models can generate high-quality clean audio signals.
They offer a balance between interpretability and performance.
Potential for robust audio restoration in difficult acoustic environments.
Abstract
With the development of audio playback devices and fast data transmission, the demand for high sound quality is rising for both entertainment and communications. In this quest for better sound quality, challenges emerge from distortions and interferences originating at the recording side or caused by an imperfect transmission pipeline. To address this problem, audio restoration methods aim to recover clean sound signals from the corrupted input data. We present here audio restoration algorithms based on diffusion models, with a focus on speech enhancement and music restoration tasks. Traditional approaches, often grounded in handcrafted rules and statistical heuristics, have shaped our understanding of audio signals. In the past decades, there has been a notable shift towards data-driven methods that exploit the modeling capabilities of DNNs. Deep generative models, and among them…
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Taxonomy
TopicsDiverse Musicological Studies
MethodsDiffusion · Focus
