Document detail
ID

oai:arXiv.org:2409.10958

Topic
Computer Science - Multimedia Computer Science - Cryptography an... Computer Science - Computer Vision... Electrical Engineering and Systems...
Author
Pan, Yongyang Liu, Xiaohong Luo, Siqi Xin, Yi Guo, Xiao Liu, Xiaoming Min, Xiongkuo Zhai, Guangtao
Category

Computer Science

Year

2024

listing date

12/18/2024

Keywords
science computer
Metrics

Abstract

Rapid advancements in multimodal large language models have enabled the creation of hyper-realistic images from textual descriptions.

However, these advancements also raise significant concerns about unauthorized use, which hinders their broader distribution.

Traditional watermarking methods often require complex integration or degrade image quality.

To address these challenges, we introduce a novel framework Towards Effective user Attribution for latent diffusion models via Watermark-Informed Blending (TEAWIB).

TEAWIB incorporates a unique ready-to-use configuration approach that allows seamless integration of user-specific watermarks into generative models.

This approach ensures that each user can directly apply a pre-configured set of parameters to the model without altering the original model parameters or compromising image quality.

Additionally, noise and augmentation operations are embedded at the pixel level to further secure and stabilize watermarked images.

Extensive experiments validate the effectiveness of TEAWIB, showcasing the state-of-the-art performance in perceptual quality and attribution accuracy.

;Comment: 9 pages, 7 figures

Pan, Yongyang,Liu, Xiaohong,Luo, Siqi,Xin, Yi,Guo, Xiao,Liu, Xiaoming,Min, Xiongkuo,Zhai, Guangtao, 2024, Towards Effective User Attribution for Latent Diffusion Models via Watermark-Informed Blending

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