MMCVSDASJul 27, 2023

Self-Supervised Visual Acoustic Matching

arXiv:2307.15064v217 citationsh-index: 99
AI Analysis

This addresses the limitation of requiring paired data in acoustic matching, enabling more diverse training and practical applications in audio synthesis.

The paper tackles the problem of acoustic matching without paired training data by proposing a self-supervised approach that uses only target scene images and audio, outperforming state-of-the-art methods on multiple datasets and real-world environments.

Acoustic matching aims to re-synthesize an audio clip to sound as if it were recorded in a target acoustic environment. Existing methods assume access to paired training data, where the audio is observed in both source and target environments, but this limits the diversity of training data or requires the use of simulated data or heuristics to create paired samples. We propose a self-supervised approach to visual acoustic matching where training samples include only the target scene image and audio -- without acoustically mismatched source audio for reference. Our approach jointly learns to disentangle room acoustics and re-synthesize audio into the target environment, via a conditional GAN framework and a novel metric that quantifies the level of residual acoustic information in the de-biased audio. Training with either in-the-wild web data or simulated data, we demonstrate it outperforms the state-of-the-art on multiple challenging datasets and a wide variety of real-world audio and environments.

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