Video Seal: Open and Efficient Video Watermarking
Pierre Fernandez, Hady Elsahar, I. Zeki Yalniz, Alexandre Mourachko

TL;DR
Video Seal introduces an efficient, robust, and open-source neural video watermarking framework that enhances imperceptibility and robustness, with innovative techniques like temporal watermark propagation and comprehensive training strategies.
Contribution
The paper presents a novel neural video watermarking framework with a unique training process and temporal propagation, improving robustness and efficiency over existing methods.
Findings
Higher robustness under challenging distortions
Effective speed and imperceptibility performance
Insights on training with video compression
Abstract
The proliferation of AI-generated content and sophisticated video editing tools has made it both important and challenging to moderate digital platforms. Video watermarking addresses these challenges by embedding imperceptible signals into videos, allowing for identification. However, the rare open tools and methods often fall short on efficiency, robustness, and flexibility. To reduce these gaps, this paper introduces Video Seal, a comprehensive framework for neural video watermarking and a competitive open-sourced model. Our approach jointly trains an embedder and an extractor, while ensuring the watermark robustness by applying transformations in-between, e.g., video codecs. This training is multistage and includes image pre-training, hybrid post-training and extractor fine-tuning. We also introduce temporal watermark propagation, a technique to convert any image watermarking model…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Chaos-based Image/Signal Encryption · Video Coding and Compression Technologies
