MarkCleaner: High-Fidelity Watermark Removal via Imperceptible Micro-Geometric Perturbation
Xiaoxi Kong, Jieyu Yuan, Pengdi Chen, Yuanlin Zhang, Chongyi Li, Bin Li

TL;DR
MarkCleaner is a novel framework that effectively removes semantic watermarks by leveraging micro-geometric perturbations, enabling robust and high-fidelity watermark removal under subtle geometric displacements.
Contribution
It introduces a micro-geometry-perturbed training approach and a mask-guided encoder with Gaussian Splatting decoder for improved watermark removal.
Findings
Achieves superior watermark removal effectiveness.
Maintains high visual fidelity.
Enables real-time inference.
Abstract
Semantic watermarks exhibit strong robustness against conventional image-space attacks. In this work, we show that such robustness does not survive under micro-geometric perturbations: spatial displacements can remove watermarks by breaking the phase alignment. Motivated by this observation, we introduce MarkCleaner, a watermark removal framework that avoids semantic drift caused by regeneration-based watermark removal. Specifically, MarkCleaner is trained with micro-geometry-perturbed supervision, which encourages the model to separate semantic content from strict spatial alignment and enables robust reconstruction under subtle geometric displacements. The framework adopts a mask-guided encoder that learns explicit spatial representations and a 2D Gaussian Splatting-based decoder that explicitly parameterizes geometric perturbations while preserving semantic content. Extensive…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Adversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis
