LVMark: Robust Watermark for latent video diffusion models
- URL: http://arxiv.org/abs/2412.09122v2
- Date: Mon, 06 Jan 2025 02:21:08 GMT
- Title: LVMark: Robust Watermark for latent video diffusion models
- Authors: MinHyuk Jang, Youngdong Jang, JaeHyeok Lee, Kodai Kawamura, Feng Yang, Sangpil Kim,
- Abstract summary: We introduce a novel watermarking method called LVMark, which embeds watermarks into video diffusion models.
A key component of LVMark is a selective weight modulation strategy that efficiently embeds watermark messages into the video diffusion model.
Our approach is the first to highlight the potential of video-generative model watermarking as a valuable tool for enhancing the effectiveness of ownership protection in video-generative models.
- Score: 5.310978296852323
- License:
- Abstract: Rapid advancements in generative models have made it possible to create hyper-realistic videos. As their applicability increases, their unauthorized use has raised significant concerns, leading to the growing demand for techniques to protect the ownership of the generative model itself. While existing watermarking methods effectively embed watermarks into image-generative models, they fail to account for temporal information, resulting in poor performance when applied to video-generative models. To address this issue, we introduce a novel watermarking method called LVMark, which embeds watermarks into video diffusion models. A key component of LVMark is a selective weight modulation strategy that efficiently embeds watermark messages into the video diffusion model while preserving the quality of the generated videos. To accurately decode messages in the presence of malicious attacks, we design a watermark decoder that leverages spatio-temporal information in the 3D wavelet domain through a cross-attention module. To the best of our knowledge, our approach is the first to highlight the potential of video-generative model watermarking as a valuable tool for enhancing the effectiveness of ownership protection in video-generative models.
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