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Main Authors: Xu, Jiayi, Zhang, Zhang, Zhang, Yuanrui, Chen, Ruitao, Xu, Yixian, He, Tianyu, He, Di
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.01085
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author Xu, Jiayi
Zhang, Zhang
Zhang, Yuanrui
Chen, Ruitao
Xu, Yixian
He, Tianyu
He, Di
author_facet Xu, Jiayi
Zhang, Zhang
Zhang, Yuanrui
Chen, Ruitao
Xu, Yixian
He, Tianyu
He, Di
contents In this paper, we introduce \emph{Luminark}, a training-free and probabilistically-certified watermarking method for general vision generative models. Our approach is built upon a novel watermark definition that leverages patch-level luminance statistics. Specifically, the service provider predefines a binary pattern together with corresponding patch-level thresholds. To detect a watermark in a given image, we evaluate whether the luminance of each patch surpasses its threshold and then verify whether the resulting binary pattern aligns with the target one. A simple statistical analysis demonstrates that the false positive rate of the proposed method can be effectively controlled, thereby ensuring certified detection. To enable seamless watermark injection across different paradigms, we leverage the widely adopted guidance technique as a plug-and-play mechanism and develop the \emph{watermark guidance}. This design enables Luminark to achieve generality across state-of-the-art generative models without compromising image quality. Empirically, we evaluate our approach on nine models spanning diffusion, autoregressive, and hybrid frameworks. Across all evaluations, Luminark consistently demonstrates high detection accuracy, strong robustness against common image transformations, and good performance on visual quality.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01085
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Luminark: Training-free, Probabilistically-Certified Watermarking for General Vision Generative Models
Xu, Jiayi
Zhang, Zhang
Zhang, Yuanrui
Chen, Ruitao
Xu, Yixian
He, Tianyu
He, Di
Computer Vision and Pattern Recognition
Artificial Intelligence
In this paper, we introduce \emph{Luminark}, a training-free and probabilistically-certified watermarking method for general vision generative models. Our approach is built upon a novel watermark definition that leverages patch-level luminance statistics. Specifically, the service provider predefines a binary pattern together with corresponding patch-level thresholds. To detect a watermark in a given image, we evaluate whether the luminance of each patch surpasses its threshold and then verify whether the resulting binary pattern aligns with the target one. A simple statistical analysis demonstrates that the false positive rate of the proposed method can be effectively controlled, thereby ensuring certified detection. To enable seamless watermark injection across different paradigms, we leverage the widely adopted guidance technique as a plug-and-play mechanism and develop the \emph{watermark guidance}. This design enables Luminark to achieve generality across state-of-the-art generative models without compromising image quality. Empirically, we evaluate our approach on nine models spanning diffusion, autoregressive, and hybrid frameworks. Across all evaluations, Luminark consistently demonstrates high detection accuracy, strong robustness against common image transformations, and good performance on visual quality.
title Luminark: Training-free, Probabilistically-Certified Watermarking for General Vision Generative Models
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2601.01085