Seeing Sound: Assembling Sounds from Visuals for Audio-to-Image Generation
Journal:
arXiv
Published Date:
Jan 9, 2025
Abstract
Training audio-to-image generative models requires an abundance of diverse
audio-visual pairs that are semantically aligned. Such data is almost always
curated from in-the-wild videos, given the cross-modal semantic correspondence
that is inherent to them. In this work, we hypothesize that insisting on the
absolute need for ground truth audio-visual correspondence, is not only
unnecessary, but also leads to severe restrictions in scale, quality, and
diversity of the data, ultimately impairing its use in the modern generative
models. That is, we propose a scalable image sonification framework where
instances from a variety of high-quality yet disjoint uni-modal origins can be
artificially paired through a retrieval process that is empowered by reasoning
capabilities of modern vision-language models. To demonstrate the efficacy of
this approach, we use our sonified images to train an audio-to-image generative
model that performs competitively against state-of-the-art. Finally, through a
series of ablation studies, we exhibit several intriguing auditory capabilities
like semantic mixing and interpolation, loudness calibration and acoustic space
modeling through reverberation that our model has implicitly developed to guide
the image generation process.