Papers
arxiv:2510.09263

SynthID-Image: Image watermarking at internet scale

Published on Oct 10
· Submitted by i on Oct 15
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Abstract

SynthID-Image, a deep learning system for watermarking AI-generated imagery, demonstrates state-of-the-art performance in visual quality and robustness, and is deployed across Google's services.

AI-generated summary

We introduce SynthID-Image, a deep learning-based system for invisibly watermarking AI-generated imagery. This paper documents the technical desiderata, threat models, and practical challenges of deploying such a system at internet scale, addressing key requirements of effectiveness, fidelity, robustness, and security. SynthID-Image has been used to watermark over ten billion images and video frames across Google's services and its corresponding verification service is available to trusted testers. For completeness, we present an experimental evaluation of an external model variant, SynthID-O, which is available through partnerships. We benchmark SynthID-O against other post-hoc watermarking methods from the literature, demonstrating state-of-the-art performance in both visual quality and robustness to common image perturbations. While this work centers on visual media, the conclusions on deployment, constraints, and threat modeling generalize to other modalities, including audio. This paper provides a comprehensive documentation for the large-scale deployment of deep learning-based media provenance systems.

Community

Paper submitter

Image watermaking at scale is possible and can be very efficient and robust !

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