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Main Authors: Duong, Minh Quoc, Lei, Chun Tong, Lau, Chun Pong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.09319
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author Duong, Minh Quoc
Lei, Chun Tong
Lau, Chun Pong
author_facet Duong, Minh Quoc
Lei, Chun Tong
Lau, Chun Pong
contents With the proliferation of AI-generated images, digital watermarking has become an essential safeguard for protecting intellectual property and mitigating malicious exploitation. Recent works on semantic watermarking have enabled efficient copyright protection for diffusion models. However, the dependence of semantic watermarking on diffusion inversion for watermark detection creates a critical vulnerability. Imprint removal and forgery attacks exploit this weakness to produce deceptive results. Our analysis reveals that these attacks succeed by displacing watermarked latents into the unwatermarked region, while guiding unwatermarked latents into the watermarked region. Based on that, we propose Progressive Guided Inversion and Denoising (PGID), the first plug-and-play, training-free noise extraction framework designed to defend against both attack strategies. PGID effectively defends by projecting perturbed latents back to the region where they originally belong. The projection is achieved by eliminating intermediate latent deflections and mitigating adversarial perturbations through progressive inversion-denoising cycles. Comprehensive evaluations across multiple schemes demonstrate that PGID successfully restores detection reliability by recovering removed watermarks and identifying forged instances.
format Preprint
id arxiv_https___arxiv_org_abs_2605_09319
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle PGID: Progressive Guided Inversion and Denoising for Robust Watermark Detection
Duong, Minh Quoc
Lei, Chun Tong
Lau, Chun Pong
Computer Vision and Pattern Recognition
Machine Learning
With the proliferation of AI-generated images, digital watermarking has become an essential safeguard for protecting intellectual property and mitigating malicious exploitation. Recent works on semantic watermarking have enabled efficient copyright protection for diffusion models. However, the dependence of semantic watermarking on diffusion inversion for watermark detection creates a critical vulnerability. Imprint removal and forgery attacks exploit this weakness to produce deceptive results. Our analysis reveals that these attacks succeed by displacing watermarked latents into the unwatermarked region, while guiding unwatermarked latents into the watermarked region. Based on that, we propose Progressive Guided Inversion and Denoising (PGID), the first plug-and-play, training-free noise extraction framework designed to defend against both attack strategies. PGID effectively defends by projecting perturbed latents back to the region where they originally belong. The projection is achieved by eliminating intermediate latent deflections and mitigating adversarial perturbations through progressive inversion-denoising cycles. Comprehensive evaluations across multiple schemes demonstrate that PGID successfully restores detection reliability by recovering removed watermarks and identifying forged instances.
title PGID: Progressive Guided Inversion and Denoising for Robust Watermark Detection
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2605.09319