Set-Membership Inference Attacks using Data Watermarking
2023-06-22Unverified0· sign in to hype
Mike Laszkiewicz, Denis Lukovnikov, Johannes Lederer, Asja Fischer
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In this work, we propose a set-membership inference attack for generative models using deep image watermarking techniques. In particular, we demonstrate how conditional sampling from a generative model can reveal the watermark that was injected into parts of the training data. Our empirical results demonstrate that the proposed watermarking technique is a principled approach for detecting the non-consensual use of image data in training generative models.