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arxiv 2502.13998 v2 pith:ZU2P37XF submitted 2025-02-19 eess.IV cs.AIcs.CRcs.CV

A Baseline Method for Removing Invisible Image Watermarks using Deep Image Prior

classification eess.IV cs.AIcs.CRcs.CV
keywords imagewatermarksinvisiblemethodabusebaselineblack-boxdeep
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Image watermarks have been considered a promising technique to help detect AI-generated content, which can be used to protect copyright or prevent fake image abuse. In this work, we present a black-box method for removing invisible image watermarks, without the need of any dataset of watermarked images or any knowledge about the watermark system. Our approach is simple to implement: given a single watermarked image, we regress it by deep image prior (DIP). We show that from the intermediate steps of DIP one can reliably find an evasion image that can remove invisible watermarks while preserving high image quality. Due to its unique working mechanism and practical effectiveness, we advocate including DIP as a baseline invasion method for benchmarking the robustness of watermarking systems. Finally, by showing the limited ability of DIP and other existing black-box methods in evading training-based visible watermarks, we discuss the positive implications on the practical use of training-based visible watermarks to prevent misinformation abuse.

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