SERUM: Simple, Efficient, Robust, and Unifying Marking for Diffusion-based Image Generation
arXiv cs.CV / 3/17/2026
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Key Points
- SERUM introduces a simple method: add a unique watermark noise to the initial diffusion generation noise and train a lightweight detector to identify watermarked images.
- It aims to be robust against image augmentations and watermark removal attacks while preserving image quality and being computationally efficient.
- The approach achieves high detection performance, with high true positive rate at a 1% false positive rate in most scenarios, and fast injection and detection with low detector training overhead.
- Its decoupled architecture enables multiple users to embed individualized watermarks with minimal interference between marks.
- It provides a practical solution to mark outputs from diffusion models and reliably distinguish generated from natural images.
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